/**
 * Copyright 2022 Huawei Technologies Co., Ltd
 *
 * Licensed under the Apache License, Version 2.0 (the "License");
 * you may not use this file except in compliance with the License.
 * You may obtain a copy of the License at
 *
 * http://www.apache.org/licenses/LICENSE-2.0
 *
 * Unless required by applicable law or agreed to in writing, software
 * distributed under the License is distributed on an "AS IS" BASIS,
 * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
 * See the License for the specific language governing permissions and
 * limitations under the License.
 */

/**
 * NN api tyes based on NNAPI header file: https://developer.android.com/ndk/reference/group/neural-networks
 */

/**
 * @addtogroup NeuralNetworks
 * @{
 */

/**
 * @file NeuralNetworksTypes.h
 */

#ifndef ANDROID_FRAMEWORKS_ML_NN_RUNTIME_NEURAL_NETWORKS_TYPES_H
#define ANDROID_FRAMEWORKS_ML_NN_RUNTIME_NEURAL_NETWORKS_TYPES_H

/******************************************************************
 *
 * IMPORTANT NOTICE:
 *
 *   This file is part of Android's set of stable system headers
 *   exposed by the Android NDK (Native Development Kit).
 *
 *   Third-party source AND binary code relies on the definitions
 *   here to be FROZEN ON ALL UPCOMING PLATFORM RELEASES.
 *
 *   - DO NOT MODIFY ENUMS (EXCEPT IF YOU ADD NEW 32-BIT VALUES)
 *   - DO NOT MODIFY CONSTANTS OR FUNCTIONAL MACROS
 *   - DO NOT CHANGE THE SIGNATURE OF FUNCTIONS IN ANY WAY
 *   - DO NOT CHANGE THE LAYOUT OR SIZE OF STRUCTURES
 */

#include <stdbool.h>
#include <stddef.h>
#include <stdint.h>
#include <sys/cdefs.h>

#ifdef __ANDROID__
#include <android/hardware_buffer.h>
#endif  // __ANDROID__

__BEGIN_DECLS

/**
 * Operand types.
 *
 * The type of an operand in a model.
 *
 * Types prefaced with ANEURALNETWORKS_TENSOR_* must be used for tensor data (i.e., tensors
 * with at least one dimension). Types not prefaced by ANEURALNETWORKS_TENSOR_* represent
 * scalar values and must have no dimensions.
 *
 * Although we define many types, most operators accept just a few
 * types. Most used are {@link ANEURALNETWORKS_TENSOR_FLOAT32},
 * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM},
 * and {@link ANEURALNETWORKS_INT32}.
 *
 * Available since NNAPI feature level 1.
 */
typedef enum {
  /** A 32 bit floating point scalar value. */
  ANEURALNETWORKS_FLOAT32 = 0,
  /** A signed 32 bit integer scalar value. */
  ANEURALNETWORKS_INT32 = 1,
  /** An unsigned 32 bit integer scalar value. */
  ANEURALNETWORKS_UINT32 = 2,
  /** A tensor of 32 bit floating point values. */
  ANEURALNETWORKS_TENSOR_FLOAT32 = 3,
  /** A tensor of 32 bit integer values. */
  ANEURALNETWORKS_TENSOR_INT32 = 4,
  /**
   * A tensor of 8 bit unsigned integers that represent real numbers.
   *
   * Attached to this tensor are two numbers that can be used to convert the
   * 8 bit integer to the real value and vice versa. These two numbers are:
   * - scale: a 32 bit floating point value greater than zero.
   * - zeroPoint: a 32 bit integer, in range [0, 255].
   *
   * The formula is:
   *   real_value = (integer_value - zeroPoint) * scale.
   */
  ANEURALNETWORKS_TENSOR_QUANT8_ASYMM = 5,
  /**
   * An 8 bit boolean scalar value.
   *
   * Values of this operand type are either true or false. A zero value
   * represents false; any other value represents true.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_BOOL = 6,
  /**
   * A tensor of 16 bit signed integers that represent real numbers.
   *
   * Attached to this tensor is a number representing real value scale that is
   * used to convert the 16 bit number to a real value in the following way:
   * realValue = integerValue * scale.
   *
   * scale is a 32 bit floating point with value greater than zero.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_TENSOR_QUANT16_SYMM = 7,
  /**
   * A tensor of IEEE 754 16 bit floating point values.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_TENSOR_FLOAT16 = 8,
  /**
   * A tensor of 8 bit boolean values.
   *
   * Values of this operand type are either true or false. A zero value
   * represents false; any other value represents true.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_TENSOR_BOOL8 = 9,
  /**
   * An IEEE 754 16 bit floating point scalar value.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_FLOAT16 = 10,
  /**
   * A tensor of 8 bit signed integers that represent real numbers.
   *
   * This tensor is associated with additional fields that can
   * be used to convert the 8 bit signed integer to the real value and vice versa.
   * These fields are:
   * - channelDim: a 32 bit unsigned integer indicating channel dimension.
   * - scales: an array of positive 32 bit floating point values.
   * The size of the scales array must be equal to dimensions[channelDim].
   *
   * {@link ANeuralNetworksModel_setOperandSymmPerChannelQuantParams} must be used
   * to set the parameters for an Operand of this type.
   *
   * The channel dimension of this tensor must not be unknown (dimensions[channelDim] != 0).
   *
   * The formula is:
   * realValue[..., C, ...] =
   *     integerValue[..., C, ...] * scales[C]
   * where C is an index in the Channel dimension.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL = 11,
  /**
   * A tensor of 16 bit unsigned integers that represent real numbers.
   *
   * Attached to this tensor are two numbers that can be used to convert the
   * 16 bit integer to the real value and vice versa. These two numbers are:
   * - scale: a 32 bit floating point value greater than zero.
   * - zeroPoint: a 32 bit integer, in range [0, 65535].
   *
   * The formula is:
   * real_value = (integer_value - zeroPoint) * scale.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_TENSOR_QUANT16_ASYMM = 12,
  /**
   * A tensor of 8 bit signed integers that represent real numbers.
   *
   * Attached to this tensor is a number representing real value scale that is
   * used to convert the 8 bit number to a real value in the following way:
   * realValue = integerValue * scale.
   *
   * scale is a 32 bit floating point with value greater than zero.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_TENSOR_QUANT8_SYMM = 13,
  /**
   * A tensor of 8 bit signed integers that represent real numbers.
   *
   * Attached to this tensor are two numbers that can be used to convert the
   * 8 bit integer to the real value and vice versa. These two numbers are:
   * - scale: a 32 bit floating point value greater than zero.
   * - zeroPoint: a 32 bit integer, in range [-128, 127].
   *
   * The formula is:
   * real_value = (integer_value - zeroPoint) * scale.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED = 14,
  /**
   * A reference to a model.
   *
   * {@link ANeuralNetworksModel_setOperandValueFromModel} must be used to set
   * the value for an Operand of this type.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_MODEL = 15,
} OperandCode;

/**
 * Operation types.
 *
 * The type of an operation in a model.
 *
 * Available since NNAPI feature level 1.
 */
typedef enum {
  // Operations below are available since NNAPI feature level 1.

  /**
   * Adds two tensors, element-wise.
   *
   * Takes two input tensors of identical {@link OperandCode} and compatible
   * dimensions. The output is the sum of both input tensors, optionally
   * modified by an activation function.
   *
   * Two dimensions are compatible when:
   *     1. they are equal, or
   *     2. one of them is 1
   *
   * The size of the output is the maximum size along each dimension of the
   * input operands. It starts with the trailing dimensions, and works its
   * way forward.
   *
   * Example:
   *
   *     input1.dimension = {4, 1, 2}
   *     input2.dimension = {5, 4, 3, 1}
   *     output.dimension = {5, 4, 3, 2}
   *
   * Since NNAPI feature level 3, generic zero-sized input tensor is supported. Zero
   * dimension is only compatible with 0 or 1. The size of the output
   * dimension is zero if either of corresponding input dimension is zero.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   * * {@link ANEURALNETWORKS_TENSOR_INT32} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: A tensor.
   * * 1: A tensor of the same {@link OperandCode}, and compatible dimensions
   *      as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scales and zeroPoint can be different from input0 scale and zeroPoint.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   *      For a {@link ANEURALNETWORKS_TENSOR_INT32} tensor,
   *      the {@link FuseCode} must be "NONE".
   *
   * Outputs:
   * * 0: The sum, a tensor of the same {@link OperandCode} as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint can be different from inputs' scale and zeroPoint.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_ADD = 0,

  /**
   * Performs a 2-D average pooling operation.
   *
   * The output dimensions are functions of the filter dimensions, stride, and
   * padding.
   *
   * The values in the output tensor are computed as:
   *
   *     output[b, i, j, channel] =
   *         sum_{di, dj}(
   *             input[b, strides[1] * i + di, strides[2] * j + dj, channel]
   *         ) / sum(1)
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   * NCHW is supported since NNAPI feature level 3.
   *
   * Both explicit padding and implicit padding are supported.
   *
   * Inputs (explicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth], specifying
   *      the input.
   *      Since NNAPI feature level 3, zero batches is supported for this tensor.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the left, in the ‘width’ dimension.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the right, in the ‘width’ dimension.
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the top, in the ‘height’ dimension.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the bottom, in the ‘height’ dimension.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 7: An {@link ANEURALNETWORKS_INT32} scalar, specifying the filter
   *      width.
   * * 8: An {@link ANEURALNETWORKS_INT32} scalar, specifying the filter
   *      height.
   * * 9: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   * * 10: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *       Set to true to specify NCHW data layout for input0 and output0.
   *       Available since NNAPI feature level 3.
   *
   * Inputs (implicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth], specifying
   *      the input.
   *      Since NNAPI feature level 3, zero batches is supported for this tensor.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar, specifying the implicit
   *      padding scheme, has to be one of the
   *      {@link PaddingCode} values.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the filter
   *      width.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the filter
   *      height.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   * * 7: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   *      Available since NNAPI feature level 3.
   *
   * Outputs:
   * * 0: The output 4-D tensor, of shape
   *      [batches, out_height, out_width, depth].
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_AVERAGE_POOL_2D = 1,

  /**
   * Concatenates the input tensors along the given dimension.
   *
   * The input tensors must have identical {@link OperandCode} and the same
   * dimensions except the dimension along the concatenation axis.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *   (full support since NNAPI feature level 3, see the input section)
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0 ~ n-1: The list of n input tensors, of shape
   *            [D0, D1, ..., Daxis(i), ..., Dm].
   *            Before NNAPI feature level 3, all input tensors of
   *            {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *            must have the same scale and zeroPoint as the output tensor.
   *            Input tensors of
   *            {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}
   *            are allowed to have different scale and zeroPoint.
   *            Since NNAPI feature level 3, zero-sized tensors are supported.
   * * n: An {@link ANEURALNETWORKS_INT32} scalar, specifying the
   *      concatenation axis.
   *
   * Outputs:
   * * 0: The output, a tensor of the same {@link OperandCode} as the input
   *      tensors. The output shape is [D0, D1, ..., sum(Daxis(i)), ..., Dm].
   *      Since NNAPI feature level 3, for a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} tensor,
   *      the scale and zeroPoint values can be different from
   *      input tensors. Before NNAPI feature level 3 they have to be the same as for the
   *      input tensors.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_CONCATENATION = 2,

  /**
   * Performs a 2-D convolution operation.
   *
   * The CONV_2D op sweeps a 2-D filter that can mix channels together over a
   * batch of images, applying the filter to each window of each image of the
   * appropriate size.
   *
   * The output dimensions are functions of the filter dimensions, stride, and
   * padding.
   *
   * The values in the output tensor are computed as:
   *
   *     output[b, i, j, channel] =
   *         sum_{di, dj, k} (
   *             input[b, strides[1] * i + di, strides[2] * j + dj, k] *
   *             filter[channel, di, dj, k]
   *         ) + bias[channel]
   *
   * Supported tensor {@link OperandCode} configurations:
   * * 32 bit floating point:
   * * * {@link ANEURALNETWORKS_TENSOR_FLOAT32} for input, filter, output, and bias.
   *
   * * Quantized:
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} for input, filter, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (with scale set to
   * * * input.scale * filter.scale).
   *
   * Available since NNAPI feature level 3:
   * * 16 bit floating point:
   * * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} for input, filter, output, and bias.
   *
   * * Quantized with symmetric per channel quantization for the filter:
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} for input, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL} for filter.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (scale set to 0.0,
   * * * each value scaling is separate and equal to input.scale * filter.scales[channel]).
   *
   * Available since NNAPI feature level 4:
   * * Quantized signed (since NNAPI feature level 4):
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} for input, filter, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (with scale set to
   * * * input.scale * filter.scale).
   *
   * * Quantized signed with filter symmetric per channel quantization
   *   (since NNAPI feature level 4):
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} for input, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL} for filter.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (scale set to 0.0,
   * * * each value scaling is separate and equal to input.scale * filter.scales[channel]).
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   * NCHW is supported since NNAPI feature level 3.
   *
   * Both explicit padding and implicit padding are supported.
   *
   * Inputs (explicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth_in],
   *      specifying the input.
   *      Since NNAPI feature level 3, zero batches is supported for this tensor.
   * * 1: A 4-D tensor, of shape
   *      [depth_out, filter_height, filter_width, depth_in], specifying the
   *      filter.
   *      For tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL}
   *      the channel dimension (ANeuralNetworksSymmPerChannelQuantParams::channelDim)
   *      must be set to 0.
   * * 2: A 1-D tensor, of shape [depth_out], specifying the bias. For input
   *      tensor of type {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *      or {@link ANEURALNETWORKS_TENSOR_FLOAT16} the bias must be of the same type.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint
   *      of 0 and bias_scale == input_scale * filter_scale.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL},
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint of 0
   *      and bias_scale of 0. The actual scale of each value 'i' is equal to
   *      bias_scale[i] = input_scale * filter_scale[i].
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the left, in the ‘width’ dimension.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the right, in the ‘width’ dimension.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the top, in the ‘height’ dimension.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the bottom, in the ‘height’ dimension.
   * * 7: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 8: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 9: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   * * 10: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   *      Available since NNAPI feature level 3.
   * * 11: An optional {@link ANEURALNETWORKS_INT32} scalar, specifying the dilation
   *      factor for width. Defaults to 1. If set to k > 1, there will be k-1 skipped
   *      cells between each filter element on width dimension. If this input is set,
   *      input 12 (dilation factor for height) must be specified as well.
   *      Available since NNAPI feature level 3.
   * * 12: An optional {@link ANEURALNETWORKS_INT32} scalar, specifying the dilation
   *      factor for height. Defaults to 1. If set to k > 1, there will be k-1 skipped
   *      cells between each filter element on height dimension. If this input is set,
   *      input 11 (dilation factor for width) must be specified as well.
   *      Available since NNAPI feature level 3.
   *
   * Inputs (implicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth_in],
   *      specifying the input.
   *      Since NNAPI feature level 3, zero batches is supported for this tensor.
   * * 1: A 4-D tensor, of shape
   *      [depth_out, filter_height, filter_width, depth_in], specifying the
   *      filter.
   *      For tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL}
   *      the channel dimension (ANeuralNetworksSymmPerChannelQuantParams::channelDim)
   *      must be set to 0.
   * * 2: A 1-D tensor, of shape [depth_out], specifying the bias. For input
   *      tensor of type {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *      or {@link ANEURALNETWORKS_TENSOR_FLOAT16} the bias must be of the same
   *      type.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint
   *      of 0 and bias_scale == input_scale * filter_scale.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL},
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint of 0
   *      and bias_scale of 0. The actual scale of each value 'i' is equal to
   *      bias_scale[i] = input_scale * filter_scale[i].
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the implicit
   *      padding scheme, has to be one of the
   *      {@link PaddingCode} values.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   * * 7: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   *      Available since NNAPI feature level 3.
   * * 8: An optional {@link ANEURALNETWORKS_INT32} scalar, specifying the dilation
   *      factor for width. Defaults to 1. If set to k > 1, there will be k-1 skipped
   *      cells between each filter element on width dimension. If this input is set,
   *      input 9 (dilation factor for height) must be specified as well.
   *      Available since NNAPI feature level 3.
   * * 9: An optional {@link ANEURALNETWORKS_INT32} scalar, specifying the dilation
   *      factor for height. Defaults to 1. If set to k > 1, there will be k-1 skipped
   *      cells between each filter element on height dimension. If this input is set,
   *      input 8 (dilation factor for width) must be specified as well.
   *      Available since NNAPI feature level 3.
   *
   * Outputs:
   * * 0: The output 4-D tensor, of shape
   *      [batches, out_height, out_width, depth_out].
   *      Before NNAPI feature level 3, for output tensor of
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}, the following condition must
   *      be satisfied: output_scale > input_scale * filter_scale
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_CONV_2D = 3,

  /**
   * Performs a depthwise 2-D convolution operation.
   *
   * Given an input tensor of shape [batches, height, width, depth_in] and a
   * filter tensor of shape [1, filter_height, filter_width, depth_out]
   * containing depth_out convolutional filters of depth 1, DEPTHWISE_CONV
   * applies a different filter to each input channel (expanding from 1
   * channel to channel_multiplier channels for each), then concatenates the
   * results together.
   *
   * The output has depth_out = depth_in * depth_multiplier channels.
   * The output dimensions are functions of the filter dimensions, stride, and
   * padding.
   *
   * The values in the output tensor are computed as:
   *
   *     output[b, i, j, k * channel_multiplier + q] =
   *         sum_{di, dj} (
   *             input[b, strides[1] * i + di, strides[2] * j + dj, k] *
   *             filter[1, di, dj, k * channel_multiplier + q]
   *         ) + bias[k * channel_multiplier + q]
   *
   * Supported tensor {@link OperandCode} configurations:
   * * 32 bit floating point:
   * * * {@link ANEURALNETWORKS_TENSOR_FLOAT32} for input, filter, output, and bias.
   *
   * * Quantized:
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} for input, filter, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (with scale set to
   * * * input.scale * filter.scale).
   *
   * Available since NNAPI feature level 3:
   * * 16 bit floating point:
   * * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} for input, filter, output, and bias.
   *
   * * Quantized with symmetric per channel quantization for the filter:
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} for input, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL} for filter.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (scale set to 0.0,
   * * * each value scaling is separate and equal to input.scale * filter.scales[channel]).
   *
   * Available since NNAPI feature level 4:
   * * Quantized signed (since NNAPI feature level 4):
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} for input, filter, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (with scale set to
   * * * input.scale * filter.scale).
   *
   * * Quantized signed with filter symmetric per channel quantization
   *   (since NNAPI feature level 4):
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} for input, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL} for filter.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (scale set to 0.0,
   * * * each value scaling is separate and equal to input.scale * filter.scales[channel]).
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   * NCHW is supported since NNAPI feature level 3.
   *
   * Both explicit padding and implicit padding are supported.
   *
   * Inputs (explicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth_in],
   *      specifying the input.
   * * 1: A 4-D tensor, of shape [1, filter_height, filter_width, depth_out],
   *      specifying the filter.
   *      For tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL}
   *      the channel dimension (ANeuralNetworksSymmPerChannelQuantParams::channelDim)
   *      must be set to 3.
   * * 2: A 1-D tensor, of shape [depth_out], specifying the bias. For input
   *      tensor of type {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *      or {@link ANEURALNETWORKS_TENSOR_FLOAT16} the bias must be of the same type.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint
   *      of 0 and bias_scale == input_scale * filter_scale.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL},
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint of 0
   *      and bias_scale of 0. The actual scale of each value 'i' is equal to
   *      bias_scale[i] = input_scale * filter_scale[i].
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the left, in the ‘width’ dimension.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the right, in the ‘width’ dimension.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the top, in the ‘height’ dimension.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the bottom, in the ‘height’ dimension.
   * * 7: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 8: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 9: An {@link ANEURALNETWORKS_INT32} scalar, specifying the depthwise
   *      multiplier.
   * * 10: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *       {@link FuseCode} values. Specifies the activation to
   *       invoke on the result.
   * * 11: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *       Set to true to specify NCHW data layout for input0 and output0.
   *       Available since NNAPI feature level 3.
   * * 12: An optional {@link ANEURALNETWORKS_INT32} scalar, specifying the dilation
   *      factor for width. Defaults to 1. If set to k > 1, there will be k-1 skipped
   *      cells between each filter element on width dimension. If this input is set,
   *      input 13 (dilation factor for height) must be specified as well.
   *      Available since NNAPI feature level 3.
   * * 13: An optional {@link ANEURALNETWORKS_INT32} scalar, specifying the dilation
   *      factor for height. Defaults to 1. If set to k > 1, there will be k-1 skipped
   *      cells between each filter element on height dimension. If this input is set,
   *      input 12 (dilation factor for width) must be specified as well.
   *      Available since NNAPI feature level 3.
   *
   * Inputs (implicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth_in],
   *      specifying the input.
   * * 1: A 4-D tensor, of shape [1, filter_height, filter_width, depth_out],
   *      specifying the filter.
   * * 2: A 1-D tensor, of shape [depth_out], specifying the bias. For input
   *      tensor of type {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *      or {@link ANEURALNETWORKS_TENSOR_FLOAT16} the bias must be of the same type.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint
   *      of 0 and bias_scale == input_scale * filter_scale.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL},
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint of 0
   *      and bias_scale of 0. The actual scale of each value 'i' is equal to
   *      bias_scale[i] = input_scale * filter_scale[i].
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the implicit
   *      padding scheme, has to be one of the
   *      {@link PaddingCode} values.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, specifying the depthwise
   *      multiplier.
   * * 7: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   * * 8: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   *      Available since NNAPI feature level 3.
   * * 9: An optional {@link ANEURALNETWORKS_INT32} scalar, specifying the dilation
   *      factor for width. Defaults to 1. If set to k > 1, there will be k-1 skipped
   *      cells between each filter element on width dimension. If this input is set,
   *      input 10 (dilation factor for height) must be specified as well.
   *      Available since NNAPI feature level 3.
   * * 10: An optional {@link ANEURALNETWORKS_INT32} scalar, specifying the dilation
   *      factor for height. Defaults to 1. If set to k > 1, there will be k-1 skipped
   *      cells between each filter element on height dimension. If this input is set,
   *      input 9 (dilation factor for width) must be specified as well.
   *      Available since NNAPI feature level 3.
   *
   * Outputs:
   * * 0: The output 4-D tensor, of shape
   *      [batches, out_height, out_width, depth_out]. Before NNAPI feature level 3, for
   *      output tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM},
   *      the following condition must be satisfied:
   *      output_scale > input_scale * filter_scale
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_DEPTHWISE_CONV_2D = 4,

  /**
   * Rearranges data from depth into blocks of spatial data.
   *
   * More specifically, this op outputs a copy of the input tensor where
   * values from the depth dimension are moved in spatial blocks to the height
   * and width dimensions. The value block_size indicates the input block size
   * and how the data is moved.
   *
   * Chunks of data of size block_size * block_size from depth are rearranged
   * into non-overlapping blocks of size block_size x block_size.
   *
   * The width of the output tensor is input_depth * block_size, whereas the
   * height is input_height * block_size. The depth of the input tensor must
   * be divisible by block_size * block_size
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   * NCHW is supported since NNAPI feature level 3.
   *
   * Inputs:
   * * 0: A 4-D tensor, of shape [batches, height, width, depth_in],
   *      specifying the input.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar, specifying the block_size.
   *      block_size must be >=1 and block_size * block_size must be a divisor
   *      of the input depth.
   * * 2: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   *      Available since NNAPI feature level 3.
   *
   * Outputs:
   * * 0: The output 4-D tensor, of shape [batch, height*block_size,
   *      width*block_size, depth/(block_size*block_size)].
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_DEPTH_TO_SPACE = 5,

  /**
   * Dequantizes the input tensor.
   *
   * The formula is:
   *
   *     output = (input - zeroPoint) * scale.
   *
   * Supported input tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported output tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}.
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: A tensor.
   *      Since NNAPI feature level 3, this tensor may be zero-sized.
   *
   * Outputs:
   * * 0: A tensor with the same shape as input0.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_DEQUANTIZE = 6,

  /**
   * Looks up sub-tensors in the input tensor.
   *
   * This operator takes for input a tensor of values (Values) and
   * a one-dimensional tensor of selection indices (Lookups).
   * The output tensor is the concatenation of sub-tensors of Values as
   * selected by Lookups.
   *
   * Think of Values as being sliced along its first dimension:
   * The entries in Lookups select which slices are concatenated together
   * to create the output tensor.
   *
   * For example, if Values has shape of [40, 200, 300] and
   * Lookups has shape of [3], all three values found in Lookups are
   * expected to be between 0 and 39. The resulting tensor must
   * have shape of [3, 200, 300].
   *
   * If a value in Lookups is out of bounds, the operation must fail
   * and an error must be reported.
   *
   * Supported value tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 4)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported value tensor rank: from 2
   *
   * Inputs:
   * * 0: Lookups. A 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}.
   *      The values are indices into the first dimension of Values.
   * * 1: Values. An n-D tensor, where n >= 2, from which sub-tensors are
   *      extracted.
   *
   * Output:
   * * 0: A n-D tensor with the same rank and shape as the Values
   *      tensor, except for the first dimension which has the same size
   *      as Lookups' only dimension.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input1.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_EMBEDDING_LOOKUP = 7,

  /**
   * Computes element-wise floor() on the input tensor.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: A tensor.
   *
   * Outputs:
   * * 0: The output tensor, of the same {@link OperandCode} and dimensions as
   *      the input tensor.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_FLOOR = 8,

  /**
   * Denotes a fully (densely) connected layer, which connects all elements
   * in the input tensor with each element in the output tensor.
   *
   * This layer implements the operation:
   *
   *     outputs = activation(inputs * weights’ + bias)
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4.
   *
   * Inputs:
   * * 0: A tensor of at least rank 2, specifying the input. If rank is
   *      greater than 2, then it gets flattened to a 2-D Tensor. The
   *      (flattened) 2-D Tensor is reshaped (if necessary) to
   *      [batch_size, input_size], where "input_size" corresponds to the
   *      number of inputs to the layer, matching the second dimension of
   *      weights, and "batch_size" is calculated by dividing the number of
   *      elements by "input_size".
   *      Since NNAPI feature level 3, zero batch_size is supported for this tensor.
   * * 1: A 2-D tensor, specifying the weights, of shape
   *      [num_units, input_size], where "num_units" corresponds to the number
   *      of output nodes.
   * * 2: A 1-D tensor, of shape [num_units], specifying the bias. For input
   *      tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT32}, the bias should
   *      also be of {@link ANEURALNETWORKS_TENSOR_FLOAT32}.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32},
   *      with zeroPoint of 0 and bias_scale == input_scale * filter_scale.
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   *
   * Outputs:
   * * 0: The output tensor, of shape [batch_size, num_units]. Before NNAPI feature level 3, for
   *      output tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}, the following
   *      condition must be satisfied: output_scale > input_scale * filter_scale.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_FULLY_CONNECTED = 9,

  /**
   * Looks up sub-tensors in the input tensor using a key-value map.
   *
   * This operator takes for input a tensor of values (Values),
   * a one-dimensional tensor of selection values (Lookups) and
   * a one-dimensional tensor that maps these values to Values
   * indexes. The output tensor is the concatenation of sub-tensors of
   * Values as selected by Lookups via Keys.
   *
   * Think of Values as being sliced along its outer-most dimension.
   * The output is a concatenation of selected slices, with one slice
   * for each entry of Lookups. The slice selected is the one at the
   * same index as the Maps entry that matches the value in Lookups.
   *
   * For a hit, the corresponding sub-tensor of Values is included
   * in the Output tensor. For a miss, the corresponding sub-tensor in
   * Output must have zero values.
   *
   * For example, if Values has shape of [40, 200, 300],
   * Keys should have a shape of [40]. If Lookups tensor has shape
   * of [3], three slices are being concatenated, so the resulting tensor
   * must have the shape of [3, 200, 300]. If the first entry in Lookups
   * has the value 123456, that value must be located in Keys tensor.
   * If the sixth entry of Keys contains 123456, the sixth slice of Values
   * must be selected. If no entry in Keys has 123456, a slice of zeroes
   * must be concatenated.
   *
   * Supported value tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *
   * Supported value tensor rank: from 2
   *
   * Inputs:
   * * 0: Lookups. A 1-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor with
   *      shape [ k ].
   * * 1: Keys. A 1-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor with shape
   *      [ n ]; Keys and Values pair represent a map, i.e., the ith element
   *      in Keys (Keys[i]) is the key to select the ith sub-tensor in Values
   *      (Values[i]), where 0 <= i <= n-1. Keys tensor *MUST* be sorted in
   *      ascending order.
   * * 2: Values. A tensor with shape of [ n, … ]; i.e., the first dimension
   *      must be n.
   *
   * Outputs:
   * * 0: Output. A tensor with shape [ k …].
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} tensor,
   *      the scale and zeroPoint must be the same as input2.
   * * 1: Hits. A boolean tensor with shape [ k ] indicates whether the lookup
   *      hits (True) or not (False).
   *      Stored as {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} with offset 0
   *      and scale 1.0f.
   *      A non-zero byte represents True, a hit. A zero indicates otherwise.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_HASHTABLE_LOOKUP = 10,

  /**
   * Applies L2 normalization along the axis dimension.
   *
   * The values in the output tensor are computed as:
   *
   *     output[batch, row, col, channel] =
   *         input[batch, row, col, channel] /
   *         sqrt(sum_{c} pow(input[batch, row, col, c], 2))
   *
   * By default the axis dimension is the last dimension of the input tensor.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   * Tensors with rank less than 4 are only supported since NNAPI feature level 3.
   *
   * Inputs:
   * * 0: An n-D tensor, specifying the tensor to be normalized.
   * * 1: An optional {@link ANEURALNETWORKS_INT32} scalar, default to -1,
   *      specifying the dimension normalization would be performed on.
   *      Negative index is used to specify axis from the end (e.g. -1 for
   *      the last axis). Must be in the range [-n, n).
   *      Available since NNAPI feature level 3.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} and same shape as input0.
   *      For {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM},
   *      the scale must be 1.f / 128 and the zeroPoint must be 128.
   *      For {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the scale must be 1.f / 128 and the zeroPoint must be 0.
   *
   *      NOTE: Before NNAPI feature level 4, if the elements along an axis are all zeros,
   *      the result is undefined. Since NNAPI feature level 4, if the elements along an axis
   *      are all zeros, the result is logical zero.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_L2_NORMALIZATION = 11,

  /**
   * Performs an 2-D L2 pooling operation.
   *
   * The output dimensions are functions of the filter dimensions, stride, and
   * padding.
   *
   * The values in the output tensor are computed as:
   *
   *     output[b, i, j, c] =
   *         sqrt(sum_{di, dj} pow(input[b, strides[1] * i + di, strides[2] * j + dj, c], 2) /
   *              sum(1))
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   * NCHW is supported since NNAPI feature level 3.
   *
   * Both explicit padding and implicit padding are supported.
   *
   * Inputs (explicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth], specifying
   *      the input.
   *      Since NNAPI feature level 3, zero batches is supported for this tensor.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the left, in the ‘width’ dimension.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the right, in the ‘width’ dimension.
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the top, in the ‘height’ dimension.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the bottom, in the ‘height’ dimension.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 7: An {@link ANEURALNETWORKS_INT32} scalar, specifying the filter
   *      width.
   * * 8: An {@link ANEURALNETWORKS_INT32} scalar, specifying the filter
   *      height.
   * * 9: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   * * 10: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *       Set to true to specify NCHW data layout for input0 and output0.
   *       Available since NNAPI feature level 3.
   *
   * Inputs (implicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth], specifying
   *      the input.
   *      Since NNAPI feature level 3, zero batches is supported for this tensor.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar, specifying the implicit
   *      padding scheme, has to be one of the
   *      {@link PaddingCode} values.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the filter
   *      width.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the filter
   *      height.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   * * 7: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   *      Available since NNAPI feature level 3.
   *
   * Outputs:
   * * 0: The output 4-D tensor, of shape
   *      [batches, out_height, out_width, depth].
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_L2_POOL_2D = 12,

  /**
   * Applies Local Response Normalization along the depth dimension.
   *
   * The 4-D input tensor is treated as a 3-D array of 1-D vectors (along the
   * last dimension), and each vector is normalized independently. Within a
   * given vector, each component is divided by the weighted, squared sum of
   * inputs within depth_radius.
   *
   * The output is calculated using this formula:
   *
   *     sqr_sum[a, b, c, d] = sum(
   *         pow(input[a, b, c, d - depth_radius : d + depth_radius + 1], 2))
   *     output = input / pow((bias + alpha * sqr_sum), beta)
   *
   * For input tensor with rank less than 4, independently normalizes each
   * 1-D slice along specified dimension.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: up to 4
   * Tensors with rank less than 4 are only supported since NNAPI feature level 3.
   *
   * Inputs:
   * * 0: A 4-D tensor, of shape [batches, height, width, depth], specifying
   *      the input.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar, specifying the radius of
   *      the normalization window.
   * * 2: A scalar, specifying the bias, must not be zero.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT16}, the bias
   *      value must be of {@link ANEURALNETWORKS_FLOAT16}.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT32}, the bias
   *      value must be of {@link ANEURALNETWORKS_FLOAT32}.
   * * 3: A scalar, specifying the scale factor, alpha.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT16}, the
   *      alpha value must be of {@link ANEURALNETWORKS_FLOAT16}.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT32}, the
   *      alpha value must be of {@link ANEURALNETWORKS_FLOAT32}.
   * * 4: A scalar, specifying the exponent, beta.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT16}, the beta
   *      value must be of {@link ANEURALNETWORKS_FLOAT16}.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT32}, the beta
   *      value must be of {@link ANEURALNETWORKS_FLOAT32}.
   * * 5: An optional {@link ANEURALNETWORKS_INT32} scalar, default to -1,
   *      specifying the dimension normalization would be performed on.
   *      Negative index is used to specify axis from the end (e.g. -1 for
   *      the last axis). Must be in the range [-n, n).
   *      Available since NNAPI feature level 3.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_LOCAL_RESPONSE_NORMALIZATION = 13,

  /**
   * Computes sigmoid activation on the input tensor element-wise.
   *
   * The output is calculated using this formula:
   *
   *     output = 1 / (1 + exp(-input))
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4.
   *
   * Inputs:
   * * 0: A tensor, specifying the input.
   *      Since NNAPI feature level 3, this tensor may be zero-sized.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *      For {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM},
   *      the scale must be 1.f / 256 and the zeroPoint must be 0.
   *      For {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the scale must be 1.f / 256 and the zeroPoint must be -128.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_LOGISTIC = 14,

  /**
   * Projects an input to a bit vector via locality sensitive hashing.
   *
   * Supported input tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *
   * Supported input tensor rank: from 1
   *
   * Inputs:
   * * 0: Hash functions. Dim.size == 2, DataType: Float.
   *      Tensor[0].Dim[0]: Number of hash functions.
   *      Tensor[0].Dim[1]: Number of projected output bits generated by each
   *      hash function.
   *      If the projection type is Sparse:
   *      Tensor[0].Dim[1] + ceil(log2(Tensor[0].Dim[0])) <= 32
   *
   * * 1: Input. Dim.size >= 1, no restriction on DataType.
   * * 2: Weight. Optional. Dim.size == 1, DataType: Float.
   *      If not set, each input element is considered to have the same weight
   *      of 1.0.
   *      Tensor[1].Dim[0] == Tensor[2].Dim[0]
   * * 3: Type:
   *        Sparse:
   *          Value LSHProjectionType_SPARSE(=3) (since NNAPI feature level 3).
   *          Computed bit vector is considered to be sparse.
   *          Each output element is an int32 made up of multiple bits
   *          computed from hash functions.
   *
   *          NOTE: To avoid collisions across hash functions, an offset value
   *          of k * (1 << Tensor[0].Dim[1]) will be added to each signature,
   *          where k is the index of the hash function.
   *
   *          Value LSHProjectionType_SPARSE_DEPRECATED(=1).
   *          Legacy behavior that does not include the offset value.
   *
   *        Dense:
   *          Value LSHProjectionType_DENSE(=2).
   *          Computed bit vector is considered to be dense. Each output
   *          element represents a bit and can take the value of either
   *          0 or 1.
   *
   * Outputs:
   * * 0: If the projection type is Sparse:
   *      Output.Dim == { Tensor[0].Dim[0] }
   *      A tensor of int32 that represents hash signatures.
   *
   *      If the projection type is Dense:
   *      Output.Dim == { Tensor[0].Dim[0] * Tensor[0].Dim[1] }
   *      A flattened tensor that represents projected bit vectors.
   *
   * Available since NNAPI feature level 1.
   * The offset value for sparse projections was added in NNAPI feature level 3.
   */
  ANEURALNETWORKS_LSH_PROJECTION = 15,

  /**
   * Performs a single time step in a Long Short-Term Memory (LSTM) layer
   *
   * The LSTM operation is described by the following equations.
   *
   * \f{eqnarray*}{
   * i_t =& \sigma(W_{xi}x_t+W_{hi}h_{t-1}+W_{ci}C_{t-1}+b_i) & \\
   * f_t =& \sigma(W_{xf}x_t+W_{hf}h_{t-1}+W_{cf}C_{t-1}+b_f) & \\
   * C_t =& clip(f_t \odot C_{t-1} + i_t \odot
   *        g(W_{xc}x_t+W_{hc}h_{t-1}+b_c),\ t_{cell}) & \\
   * o_t =& \sigma(W_{xo}x_t+W_{ho}h_{t-1}+W_{co}C_t+b_o) & \\
   *      & & \\
   *      & clip(W_{proj}(o_t \odot g(C_t))+b_{proj},\ t_{proj})
   *      & if\ there\ is\ a\ projection; \\
   * h_t =& & \\
   *      & o_t \odot g(C_t) & otherwise. \\
   * \f}
   * Where:
   * * \f$x_t\f$ is the input,
   * * \f$i_t\f$ is the input gate,
   * * \f$f_t\f$ is the forget gate,
   * * \f$C_t\f$ is the cell state,
   * * \f$o_t\f$ is the output,
   * * \f$h_t\f$ is the output state,
   * * \f$\sigma\f$ is the logistic sigmoid function,
   * * \f$g\f$ is the cell input and cell output activation function, usually
   *   \f$tahn\f$,
   * * \f$W_{xi}\f$ is the input-to-input weight matrix,
   * * \f$W_{hi}\f$ is the recurrent to input weight matrix,
   * * \f$W_{ci}\f$ is the cell-to-input weight matrix,
   * * \f$b_i\f$ is the input gate bias,
   * * \f$W_{xf}\f$ is the input-to-forget weight matrix,
   * * \f$W_{hf}\f$ is the recurrent-to-forget weight matrix,
   * * \f$W_{cf}\f$ is the cell-to-forget weight matrix,
   * * \f$b_f\f$ is the forget gate bias,
   * * \f$W_{xc}\f$ is the input-to-cell weight matrix,
   * * \f$W_{hc}\f$ is the recurrent-to-cell weight matrix,
   * * \f$b_c\f$ is the cell bias,
   * * \f$W_{xo}\f$ is the input-to-output weight matrix,
   * * \f$W_{ho}\f$ is the recurrent-to-output weight matrix,
   * * \f$W_{co}\f$ is the cell-to-output weight matrix,
   * * \f$b_o\f$ is the output gate bias,
   * * \f$W_{proj}\f$ is the projection weight matrix,
   * * \f$b_{proj}\f$ is the projection bias,
   * * \f$t_{cell}\f$ is the threshold for clipping the cell state, and
   * * \f$t_{proj}\f$ is the threshold for clipping the projected output.
   * * \f$\odot\f$ is the
   *   <a href="https://en.wikipedia.org/wiki/Hadamard_product_(matrices)">
   *   Hadamard product</a> that takes two matrices and produces another
   *   matrix, each element of which is the product of the corresponding
   *   elements of the input matrices.
   *
   * Since NNAPI feature level 3 LSTM supports layer normalization.
   * In case layer normalization is used, the inputs to internal activation
   * functions (sigmoid and \f$g\f$) are normalized, rescaled and recentered
   * following an approach from section 3.1 from
   * https://arxiv.org/pdf/1607.06450.pdf
   *
   * The operation has the following independently optional inputs:
   * * The cell-to-input weights (\f$W_{ci}\f$), cell-to-forget weights
   *   (\f$W_{cf}\f$) and cell-to-output weights (\f$W_{co}\f$) either all
   *   have values or neither of them have values (i.e., all set to null). If
   *   they have values, the peephole optimization is used.
   * * The input-to-input weights (\f$W_{xi}\f$), recurrent-to-input weights
   *   (\f$W_{hi}\f$) and input gate bias (\f$b_i\f$) either all have values,
   *   or none of them have values. If they have no values, coupling of input
   *   and forget gates (CIFG) is used, in which case the input gate
   *   (\f$i_t\f$) is calculated using the following equation instead.
   *   \f{eqnarray*}{
   *   i_t = 1 - f_t
   *   \f}
   *   In case peephole optimization is used and CIFG is not used
   *   cell-to-input (\f$W_{ci}\f$) weights must be present. Otherwise, the
   *   cell-to-input weights must have no value.
   * * The projection weights (\f$W_{proj}\f$) is required only for the
   *   recurrent projection layer, and should otherwise have no value.
   * * The projection bias (\f$b_{proj}\f$) may (but not required to) have a
   *   value if the recurrent projection layer exists, and should otherwise
   *   have no value.
   * * (NNAPI feature level 3 or later) The four layer normalization weights either all have
   *   values or none of them have values. Additionally, if CIFG is used,
   *   input layer normalization weights tensor is omitted and the other layer
   *   normalization weights either all have values or none of them have
   *   values. Layer normalization is used when the values of all the layer
   *   normalization weights are present.
   *
   * References:
   *
   * The default non-peephole non-CIFG implementation is based on:
   * http://www.bioinf.jku.at/publications/older/2604.pdf
   * S. Hochreiter and J. Schmidhuber. "Long Short-Term Memory". Neural
   * Computation, 9(8):1735-1780, 1997.
   *
   * The peephole implementation and projection layer is based on:
   * https://research.google.com/pubs/archive/43905.pdf
   * Hasim Sak, Andrew Senior, and Francoise Beaufays. "Long short-term memory
   * recurrent neural network architectures for large scale acoustic
   * modeling." INTERSPEECH, 2014.
   * (However, the concept of peephole optimization was introduced in work
   * prior to this paper.)
   *
   * The coupling of input and forget gate (CIFG) is based on:
   * http://arxiv.org/pdf/1503.04069.pdf
   * Greff et al. "LSTM: A Search Space Odyssey"
   *
   * The layer normalization is based on:
   * https://arxiv.org/pdf/1607.06450.pdf
   * Jimmy Ba et al. "Layer Normalization"
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * All input and output tensors must be of the same type.
   *
   * Inputs:
   * * 0: The input (\f$x_t\f$).
   *      A 2-D tensor of shape [batch_size, input_size], where “batch_size”
   *      corresponds to the batching dimension, and “input_size” is the size
   *      of the input.
   * * 1: The input-to-input weights (\f$W_{xi}\f$). Optional.
   *      A 2-D tensor of shape [num_units, input_size], where “num_units”
   *      corresponds to the number of cell units.
   * * 2: The input-to-forget weights (\f$W_{xf}\f$).
   *      A 2-D tensor of shape [num_units, input_size].
   * * 3: The input-to-cell weights (\f$W_{xc}\f$).
   *      A 2-D tensor of shape [num_units, input_size].
   * * 4: The input-to-output weights (\f$W_{xo}\f$).
   *      A 2-D tensor of shape [num_units, input_size].
   * * 5: The recurrent-to-input weights (\f$W_{hi}\f$). Optional.
   *      A 2-D tensor of shape [num_units, output_size], where “output_size”
   *      corresponds to either the number of cell units (i.e., “num_units”),
   *      or the second dimension of the “projection_weights”, if defined.
   * * 6: The recurrent-to-forget weights (\f$W_{hf}\f$).
   *      A 2-D tensor of shape [num_units, output_size].
   * * 7: The recurrent-to-cell weights (\f$W_{hc}\f$).
   *      A 2-D tensor of shape [num_units, output_size].
   * * 8: The recurrent-to-output weights (\f$W_{ho}\f$).
   *      A 2-D tensor of shape [num_units, output_size].
   * * 9: The cell-to-input weights (\f$W_{ci}\f$). Optional.
   *      A 1-D tensor of shape [num_units].
   * * 10:The cell-to-forget weights (\f$W_{cf}\f$). Optional.
   *      A 1-D tensor of shape [num_units].
   * * 11:The cell-to-output weights (\f$W_{co}\f$). Optional.
   *      A 1-D tensor of shape [num_units].
   * * 12:The input gate bias (\f$b_i\f$). Optional.
   *      A 1-D tensor of shape [num_units].
   * * 13:The forget gate bias (\f$b_f\f$).
   *      A 1-D tensor of shape [num_units].
   * * 14:The cell bias (\f$b_c\f$).
   *      A 1-D tensor of shape [num_units].
   * * 15:The output gate bias (\f$b_o\f$).
   *      A 1-D tensor of shape [num_units].
   * * 16:The projection weights (\f$W_{proj}\f$). Optional.
   *      A 2-D tensor of shape [output_size, num_units].
   * * 17:The projection bias (\f$b_{proj}\f$). Optional.
   *      A 1-D tensor of shape [output_size].
   * * 18:The output state (in) (\f$h_{t-1}\f$).
   *      A 2-D tensor of shape [batch_size, output_size].
   * * 19:The cell state (in) (\f$C_{t-1}\f$).
   *      A 2-D tensor of shape [batch_size, num_units].
   * * 20:The activation function (\f$g\f$).
   *      A value indicating the activation function:
   *      <ul>
   *      <li>0: None;
   *      <li>1: Relu;
   *      <li>3: Relu6;
   *      <li>4: Tanh;
   *      <li>6: Sigmoid.
   *      </ul>
   * * 21:The clipping threshold (\f$t_{cell}\f$) for the cell state, such
   *      that values are bound within [-cell_clip, cell_clip]. If set to 0.0
   *      then clipping is disabled.
   *      Until NNAPI feature level 3 this scalar must be of type {@link
   *      ANEURALNETWORKS_FLOAT32}. Since NNAPI feature level 3, if all the input
   *      tensors have type {@link ANEURALNETWORKS_TENSOR_FLOAT32}, this
   *      scalar must be of the type {@link ANEURALNETWORKS_FLOAT32},
   *      otherwise if all the input tensors have the type {@link
   *      ANEURALNETWORKS_TENSOR_FLOAT16}, this scalar must be of type {@link
   *      ANEURALNETWORKS_FLOAT16}.
   * * 22:The clipping threshold (\f$t_{proj}\f$) for the output from the
   *      projection layer, such that values are bound within
   *      [-proj_clip, proj_clip]. If set to 0.0 then clipping is disabled.
   *      Until NNAPI feature level 3 this scalar must be of type {@link
   *      ANEURALNETWORKS_FLOAT32}. Since NNAPI feature level 3, if all the input
   *      tensors have type {@link ANEURALNETWORKS_TENSOR_FLOAT32}, this
   *      scalar must be of the type {@link ANEURALNETWORKS_FLOAT32},
   *      otherwise if all the input tensors have the type {@link
   *      ANEURALNETWORKS_TENSOR_FLOAT16}, this scalar must be of type {@link
   *      ANEURALNETWORKS_FLOAT16}.
   * Since NNAPI feature level 3 there are additional inputs to this op:
   * * 23:The input layer normalization weights.
   *      A 1-D tensor of shape [num_units]. Used to rescale normalized inputs
   *      to activation at input gate.
   * * 24:The forget layer normalization weights.
   *      A 1-D tensor of shape [num_units]. Used to rescale normalized inputs
   *      to activation at forget gate.
   * * 25:The cell layer normalization weights.
   *      A 1-D tensor of shape [num_units]. Used to rescale normalized inputs
   *      to activation at cell gate.
   * * 26:The output layer normalization weights.
   *      A 1-D tensor of shape [num_units]. Used to rescale normalized inputs
   *      to activation at output gate.
   *
   * Outputs:
   * * 0: The scratch buffer.
   *      A 2-D tensor of shape [batch_size, num_units * 3] with CIFG, or
   *      [batch_size, num_units * 4] without CIFG.
   * * 1: The output state (out) (\f$h_t\f$).
   *      A 2-D tensor of shape [batch_size, output_size].
   * * 2: The cell state (out) (\f$C_t\f$).
   *      A 2-D tensor of shape [batch_size, num_units].
   * * 3: The output (\f$o_t\f$).
   *      A 2-D tensor of shape [batch_size, output_size]. This is effectively
   *      the same as the current “output state (out)” value.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_LSTM = 16,

  /**
   * Performs an 2-D max pooling operation.
   *
   * The output dimensions are functions of the filter dimensions, stride, and
   * padding.
   *
   * The values in the output tensor are computed as:
   *
   *     output[b, i, j, channel] =
   *         max_{di, dj} (
   *             input[b, strides[1] * i + di, strides[2] * j + dj, channel]
   *         )
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   * NCHW is supported since NNAPI feature level 3.
   *
   * Both explicit padding and implicit padding are supported.
   *
   * Inputs (explicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth], specifying
   *      the input.
   *      Since NNAPI feature level 3, zero batches is supported for this tensor.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the left, in the ‘width’ dimension.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the right, in the ‘width’ dimension.
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the top, in the ‘height’ dimension.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the bottom, in the ‘height’ dimension.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 7: An {@link ANEURALNETWORKS_INT32} scalar, specifying the filter
   *      width.
   * * 8: An {@link ANEURALNETWORKS_INT32} scalar, specifying the filter
   *      height.
   * * 9: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   * * 10: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *       Set to true to specify NCHW data layout for input0 and output0.
   *       Available since NNAPI feature level 3.
   *
   * Inputs (implicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth], specifying
   *      the input.
   *      Since NNAPI feature level 3, zero batches is supported for this tensor.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar, specifying the implicit
   *      padding scheme, has to be one of the
   *      {@link PaddingCode} values.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the filter
   *      width.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the filter
   *      height.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   * * 7: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   *      Available since NNAPI feature level 3.
   *
   * Outputs:
   * * 0: The output 4-D tensor, of shape
   *      [batches, out_height, out_width, depth].
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_MAX_POOL_2D = 17,

  /**
   * Multiplies two tensors, element-wise.
   *
   * Takes two input tensors of identical {@link OperandCode} and compatible
   * dimensions. The output is the product of both input tensors, optionally
   * modified by an activation function.
   *
   * Two dimensions are compatible when:
   *     1. they are equal, or
   *     2. one of them is 1
   *
   * The size of the resulting output is the maximum size along each dimension
   * of the input operands. It starts with the trailing dimensions, and works
   * its way forward.
   *
   * Since NNAPI feature level 3, generic zero-sized input tensor is supported. Zero
   * dimension is only compatible with 0 or 1. The size of the output
   * dimension is zero if either of corresponding input dimension is zero.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   * * {@link ANEURALNETWORKS_TENSOR_INT32} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: A tensor.
   * * 1: A tensor of the same {@link OperandCode}, and compatible dimensions
   *      as input0.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   *      For a {@link ANEURALNETWORKS_TENSOR_INT32} tensor,
   *      the {@link FuseCode} must be "NONE".
   *
   * Outputs:
   * * 0: The product, a tensor of the same {@link OperandCode} as input0.
   *      For output tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the following condition must be satisfied:
   *      output_scale > input1_scale * input2_scale.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_MUL = 18,

  /**
   * Computes rectified linear activation on the input tensor element-wise.
   *
   * The output is calculated using this formula:
   *
   *     output = max(0, input)
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4.
   *
   * Inputs:
   * * 0: A tensor, specifying the input.
   *      Since NNAPI feature level 3, this tensor may be zero-sized.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_RELU = 19,

  /**
   * Computes rectified linear 1 activation on the input tensor element-wise.
   *
   * The output is calculated using this formula:
   *
   *     output = min(1.f, max(-1.f, input))
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4.
   *
   * Inputs:
   * * 0: A tensor, specifying the input.
   *      Since NNAPI feature level 3, this tensor may be zero-sized.
   *
   * Outputs:
   * * 0: The output tensor of the same shape as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_RELU1 = 20,

  /**
   * Computes rectified linear 6 activation on the input tensor element-wise.
   *
   * The output is calculated using this formula:
   *
   *     output = min(6, max(0, input))
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4.
   *
   * Inputs:
   * * 0: A tensor, specifying the input.
   *      Since NNAPI feature level 3, this tensor may be zero-sized.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_RELU6 = 21,

  /**
   * Reshapes a tensor.
   *
   * Given tensor, this operation returns a tensor that has the same values as
   * tensor, but with a newly specified shape.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4.
   *
   * Inputs:
   * * 0: A tensor, specifying the tensor to be reshaped.
   * * 1: A 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}, defining the
   *      shape of the output tensor. The number of elements implied by shape
   *      must be the same as the number of elements in the input tensor.
   *
   *      If one component of shape is the special value -1, the size of that
   *      dimension is computed so that the total size remains constant. In
   *      particular, a shape of [-1] flattens into 1-D. At most one component
   *      of shape can be -1.
   *
   * Outputs:
   * * 0: The output tensor, of shape specified by the input shape.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_RESHAPE = 22,

  /**
   * Resizes images to given size using the bilinear interpretation.
   *
   * Resized images must be distorted if their output aspect ratio is not the
   * same as input aspect ratio. The corner pixels of output may not be the
   * same as corner pixels of input.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   * NCHW is supported since NNAPI feature level 3.
   *
   * Both resizing by shape and resizing by scale are supported.
   *
   * Inputs (resizing by shape):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth], specifying
   *      the input.
   *      Since NNAPI feature level 3, zero batches is supported for this tensor.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar, specifying the output
   *      width of the output tensor.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, specifying the output
   *      height of the output tensor.
   * * 3: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   *      Available since NNAPI feature level 3.
   * * 4: Align corners. An optional {@link ANEURALNETWORKS_BOOL}
   *      scalar, default to false.  If True, the centers of the 4 corner
   *      pixels of the input and output tensors are aligned, preserving the
   *      values at the corner pixels.
   *      Available since NNAPI feature level 4.
   * * 5: Half pixel centers. An optional {@link ANEURALNETWORKS_BOOL}
   *      scalar, default to false. If True, the pixel centers are assumed to
   *      be at (0.5, 0.5). This is the default behavior of image.resize in
   *      TF 2.0. If this parameter is True, then align_corners parameter
   *      must be False.
   *      Available since NNAPI feature level 4.
   *
   * Inputs (resizing by scale, since NNAPI feature level 3):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth], specifying
   *      the input. Zero batches is supported for this tensor.
   * * 1: A scalar, specifying width_scale, the scaling factor of the width
   *      dimension from the input tensor to the output tensor. The output
   *      width is calculated as new_width = floor(width * width_scale).
   *      The scalar must be of {@link ANEURALNETWORKS_FLOAT16} if input0 is
   *      of {@link ANEURALNETWORKS_TENSOR_FLOAT16} and of
   *      {@link ANEURALNETWORKS_FLOAT32} otherwise.
   * * 2: A scalar, specifying height_scale, the scaling factor of the height
   *      dimension from the input tensor to the output tensor. The output
   *      height is calculated as new_height = floor(height * height_scale).
   *      The scalar must be of {@link ANEURALNETWORKS_FLOAT16} if input0 is
   *      of {@link ANEURALNETWORKS_TENSOR_FLOAT16} and of
   *      {@link ANEURALNETWORKS_FLOAT32} otherwise.
   * * 3: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   * * 4: Align corners. An optional {@link ANEURALNETWORKS_BOOL}
   *      scalar, default to false.  If True, the centers of the 4 corner
   *      pixels of the input and output tensors are aligned, preserving the
   *      values at the corner pixels.
   *      Available since NNAPI feature level 4.
   * * 5: Half pixel centers. An optional {@link ANEURALNETWORKS_BOOL}
   *      scalar, default to false. If True, the pixel centers are assumed to
   *      be at (0.5, 0.5). This is the default behavior of image.resize in
   *      TF 2.0. If this parameter is True, then align_corners parameter
   *      must be False.
   *      Available since NNAPI feature level 4.
   *
   * Outputs:
   * * 0: The output 4-D tensor, of shape
   *      [batches, new_height, new_width, depth].
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_RESIZE_BILINEAR = 23,

  /**
   * A basic recurrent neural network layer.
   *
   * This layer implements the operation:
   * outputs = state = activation(inputs * input_weights +
   *                              state * recurrent_weights + bias)
   *
   * Where:
   * * “input_weights” is a weight matrix that multiplies the inputs;
   * * “recurrent_weights” is a weight matrix that multiplies the current
   *    “state” which itself is the output from the previous time step
   *    computation;
   * * “bias” is a bias vector (added to each output vector in the batch);
   * * “activation” is the function passed as the “fused_activation_function”
   *   argument (if not “NONE”).
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * The input tensors must all be the same type.
   *
   * Inputs:
   * * 0: input.
   *      A 2-D tensor of shape [batch_size, input_size], where “batch_size”
   *      corresponds to the batching dimension, and “input_size” is the size
   *      of the input.
   * * 1: weights.
   *      A 2-D tensor of shape [num_units, input_size], where “num_units”
   *      corresponds to the number of units.
   * * 2: recurrent_weights.
   *      A 2-D tensor of shape [num_units, num_units], with columns
   *      corresponding to the weights from each unit.
   * * 3: bias.
   *      A 1-D tensor of shape [num_units].
   * * 4: hidden state (in).
   *      A 2-D tensor of shape [batch_size, num_units].
   * * 5: fused_activation_function.
   *      An optional {@link FuseCode} value indicating the
   *      activation function. If “NONE” is specified then it results in a
   *      linear activation.
   *
   * Outputs:
   * * 0: hidden state (out).
   *      A 2-D tensor of shape [batch_size, num_units].
   *
   * * 1: output.
   *      A 2-D tensor of shape [batch_size, num_units]. This is effectively
   *      the same as the current state value.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_RNN = 24,

  /**
   * Computes the softmax activation on the input tensor element-wise, per
   * batch, by normalizing the input vector so the maximum coefficient is
   * zero.
   *
   * The output is calculated using this formula:
   *
   *     output[batch, i] =
   *         exp((input[batch, i] - max(input[batch, :])) * beta) /
   *         sum_{k}{exp((input[batch, k] - max(input[batch, :])) * beta)}
   *
   * For input tensor with rank other than 2, the activation will be applied
   * independently on each 1-D slice along specified dimension.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4.
   * Tensors with rank other than 2 or 4 are only supported since NNAPI feature level 3.
   *
   * Inputs:
   * * 0: A 2-D or 4-D tensor, specifying the tensor to be reshaped.
   *      Since NNAPI feature level 3, this tensor may be zero-sized.
   * * 1: A scalar, specifying the positive scaling factor for the exponent,
   *      beta. If input0 is of {@link ANEURALNETWORKS_TENSOR_FLOAT32},
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} or
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}, the scalar
   *      must be of {@link ANEURALNETWORKS_FLOAT32}.
   *      If input0 is of {@link ANEURALNETWORKS_TENSOR_FLOAT16}, then the
   *      scalar must be of {@link ANEURALNETWORKS_FLOAT16}.
   * * 2: An optional {@link ANEURALNETWORKS_INT32} scalar, default to -1,
   *      specifying the dimension the activation would be performed on.
   *      Negative index is used to specify axis from the end (e.g. -1 for
   *      the last axis). Must be in the range [-n, n).
   *      Available since NNAPI feature level 3.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *      For {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM},
   *      the scale must be 1.f / 256 and the zeroPoint must be 0.
   *      For {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the scale must be 1.f / 256 and the zeroPoint must be -128.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_SOFTMAX = 25,

  /**
   * Rearranges blocks of spatial data, into depth.
   *
   * More specifically, this op outputs a copy of the input tensor where
   * values from the height and width dimensions are moved to the depth
   * dimension. The value block_size indicates the input block size and how
   * the data is moved.
   *
   * Chunks of data of size block_size * block_size from depth are rearranged
   * into non-overlapping blocks of size block_size x block_size.
   *
   * The depth of the output tensor is input_depth * block_size * block_size.
   * The input tensor's height and width must be divisible by block_size.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   * NCHW is supported since NNAPI feature level 3.
   *
   * Inputs:
   * * 0: A 4-D tensor, of shape [batches, height, width, depth_in],
   *      specifying the input.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar, specifying the block_size.
   *      block_size must be >=1 and block_size must be a divisor of both the
   *      input height and width.
   * * 2: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   *      Available since NNAPI feature level 3.
   *
   * Outputs:
   * * 0: The output 4-D tensor, of shape [batches, height/block_size,
   *      width/block_size, depth_in*block_size*block_size].
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_SPACE_TO_DEPTH = 26,

  /**
   * SVDF op is a kind of stateful layer derived from the notion that a
   * densely connected layer that's processing a sequence of input frames can
   * be approximated by using a singular value decomposition of each of its
   * nodes. The implementation is based on:
   *
   * https://research.google.com/pubs/archive/43813.pdf
   *
   * P. Nakkiran, R. Alvarez, R. Prabhavalkar, C. Parada.
   * “Compressing Deep Neural Networks using a Rank-Constrained Topology”.
   * INTERSPEECH, 2015.
   *
   * It processes the incoming input using a 2-stage filtering mechanism:
   * * stage 1 performs filtering on the "features" dimension, whose outputs
   *   get pushed into a memory of fixed-size memory_size.
   * * stage 2 performs filtering on the "time" dimension of the memory_size
   *   memoized outputs of stage 1.
   *
   * Specifically, for rank 1, this layer implements the operation:
   *
   *     memory = push(conv1d(inputs, weights_feature, feature_dim,
   *                          "ANEURALNETWORKS_PADDING_VALID"));
   *     outputs = activation(memory * weights_time + bias);
   *
   * Where:
   * * “weights_feature” is a weights matrix that processes the inputs (by
   *   convolving the input with every “feature filter”), and whose outputs
   *   get pushed, stacked in order, into the fixed-size “memory” (the oldest
   *   entry gets dropped);
   * * “weights_time” is a weights matrix that processes the “memory” (by a
   *   batched matrix multiplication on the num_units);
   * * “bias” is an optional bias vector (added to each output vector in the
   *   batch); and
   * * “activation” is the function passed as the “fused_activation_function”
   *   argument (if not “NONE”).
   *
   * Each rank adds a dimension to the weights matrices by means of stacking
   * the filters.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * All input tensors must be the same type.
   *
   * Inputs:
   * * 0: input.
   *      A 2-D tensor of shape [batch_size, input_size], where “batch_size”
   *      corresponds to the batching dimension, and “input_size” is the size
   *      of the input.
   * * 1: weights_feature.
   *      A 2-D tensor of shape [num_units, input_size], where “num_units”
   *      corresponds to the number of units.
   * * 2: weights_time.
   *      A 2-D tensor of shape [num_units, memory_size], where “memory_size”
   *      corresponds to the fixed-size of the memory.
   * * 3: bias.
   *      An optional 1-D tensor of shape [num_units].
   * * 4: state (in).
   *      A 2-D tensor of shape [batch_size, (memory_size - 1) * num_units * rank].
   * * 5: rank.
   *      The rank of the SVD approximation.
   * * 6: fused_activation_function.
   *      An optional {@link FuseCode} value indicating the
   *      activation function. If “NONE” is specified then it results in a
   *      linear activation.
   *
   * Outputs:
   * * 0: state (out).
   *      A 2-D tensor of the same {@link OperandCode} as the inputs, with shape
   *      [batch_size, (memory_size - 1) * num_units * rank].
   * * 1: output.
   *      A 2-D tensor of the same {@link OperandCode} as the inputs, with shape
   *      [batch_size, num_units].
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_SVDF = 27,

  /**
   * Computes hyperbolic tangent of input tensor element-wise.
   *
   * The output is calculated using this formula:
   *
   *     output = tanh(input)
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4.
   *
   * Inputs:
   * * 0: A tensor, specifying the input.
   *      Since NNAPI feature level 3, this tensor may be zero-sized.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *      For {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM},
   *      the scale must be 1.f / 128 and the zeroPoint must be 128.
   *      For {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the scale must be 1.f / 128 and the zeroPoint must be 0.
   *
   * Available since NNAPI feature level 1.
   */
  ANEURALNETWORKS_TANH = 28,

  // Operations below are available since NNAPI feature level 2.

  /**
   * BatchToSpace for N-dimensional tensors.
   *
   * This operation reshapes the batch dimension (dimension 0) into M + 1
   * dimensions of shape block_shape + [batch], interleaves these blocks back
   * into the grid defined by the spatial dimensions [1, ..., M], to obtain a
   * result with the same rank as the input.
   *
   * This is the reverse of SpaceToBatch.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   * NCHW is supported since NNAPI feature level 3.
   *
   * Inputs:
   * * 0: An n-D tensor, specifying the tensor to be reshaped
   * * 1: A 1-D Tensor of {@link ANEURALNETWORKS_TENSOR_INT32}, the block
   *      sizes for each spatial dimension of the input tensor. All values
   *      must be >= 1.
   * * 2: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   *      Available since API level 29.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 2.
   */
  ANEURALNETWORKS_BATCH_TO_SPACE_ND = 29,

  /**
   * Element-wise division of two tensors.
   *
   * Takes two input tensors of identical {@link OperandCode} and compatible
   * dimensions. The output is the result of dividing the first input tensor
   * by the second, optionally modified by an activation function.
   *
   * For inputs of {@link ANEURALNETWORKS_TENSOR_INT32}, performs
   * "floor division" ("//" in Python). For example,
   *     5 // 2 = 2
   *    -5 // 2 = -3
   *
   * Two dimensions are compatible when:
   *     1. they are equal, or
   *     2. one of them is 1
   *
   * The size of the output is the maximum size along each dimension of the
   * input operands. It starts with the trailing dimensions, and works its way
   * forward.
   *
   * Example:
   *     input1.dimension =    {4, 1, 2}
   *     input2.dimension = {5, 4, 3, 1}
   *     output.dimension = {5, 4, 3, 2}
   *
   * Since NNAPI feature level 3, generic zero-sized input tensor is supported. Zero
   * dimension is only compatible with 0 or 1. The size of the output
   * dimension is zero if either of corresponding input dimension is zero.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor, specifying the first input.
   * * 1: A tensor of the same {@link OperandCode}, and compatible dimensions
   *      as input0.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   *      For a {@link ANEURALNETWORKS_TENSOR_INT32} tensor,
   *      the {@link FuseCode} must be "NONE".
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *
   * Available since NNAPI feature level 2.
   */
  ANEURALNETWORKS_DIV = 30,

  /**
   * Computes the mean of elements across dimensions of a tensor.
   *
   * Reduces the input tensor along the given dimensions to reduce. Unless
   * keep_dims is true, the rank of the tensor is reduced by 1 for each entry
   * in axis. If keep_dims is true, the reduced dimensions are retained with
   * length 1.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: A tensor, specifying the input.
   * * 1: A 1-D Tensor of {@link ANEURALNETWORKS_TENSOR_INT32}. The dimensions
   *      to reduce. Must be in the range
   *      [-rank(input_tensor), rank(input_tensor)).
   *
   *      NOTE: When the operation was introduced, the documentation
   *      incorrectly stated that if dimensions were empty, the operation
   *      would reduce across all dimensions. This behavior was never
   *      implemented.
   *
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, keep_dims. If positive,
   *      retains reduced dimensions with length 1.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *      If all dimensions are reduced and keep_dims is false, the output
   *      shape is [1].
   *
   * Available since NNAPI feature level 2.
   */
  ANEURALNETWORKS_MEAN = 31,

  /**
   * Pads a tensor.
   *
   * This operation pads a tensor according to the specified paddings.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *   (full support since NNAPI feature level 3, see the output section)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor, specifying the tensor to be padded.
   * * 1: A 2-D Tensor of {@link ANEURALNETWORKS_TENSOR_INT32}, the paddings
   *      for each spatial dimension of the input tensor. The shape of the
   *      tensor must be {rank(input0), 2}.
   *      padding[i, 0] specifies the number of elements to be padded in the
   *      front of dimension i.
   *      padding[i, 1] specifies the number of elements to be padded after the
   *      end of dimension i.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0. The
   *      output tensor has the same rank as input0, and each
   *      dimension of the output tensor has the same size as the
   *      corresponding dimension of the input tensor plus the size
   *      of the padding:
   *          output0.dimension[i] =
   *              padding[i, 0] + input0.dimension[i] + padding[i, 1]
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   *      NOTE: Before NNAPI feature level 3, the pad value for
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} is undefined.
   *      Since NNAPI feature level 3, the pad value is always the logical zero.
   *
   * Available since NNAPI feature level 2.
   */
  ANEURALNETWORKS_PAD = 32,

  /**
   * SpaceToBatch for N-Dimensional tensors.
   *
   * This operation divides "spatial" dimensions [1, ..., M] of the input into
   * a grid of blocks of shape block_shape, and interleaves these blocks with
   * the "batch" dimension (0) such that in the output, the spatial dimensions
   * [1, ..., M] correspond to the position within the grid, and the batch
   * dimension combines both the position within a spatial block and the
   * original batch position. Prior to division into blocks, the spatial
   * dimensions of the input are optionally zero padded according to paddings.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *   (full support since NNAPI feature level 3, see the output section)
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   * NCHW is supported since NNAPI feature level 3.
   *
   * Inputs:
   * * 0: An n-D tensor, specifying the input.
   * * 1: A 1-D Tensor of {@link ANEURALNETWORKS_TENSOR_INT32}, the block
   *      sizes for each spatial dimension of the input tensor. All values
   *      must be >= 1.
   * * 2: A 2-D Tensor of {@link ANEURALNETWORKS_TENSOR_INT32}, the paddings
   *      for each spatial dimension of the input tensor. All values must be
   *      >= 0. The shape of the tensor must be {M, 2}, where M is the number
   *      of spatial dimensions.
   *      padding[i, 0] specifies the number of element to be padded in the
   *      front of dimension i.
   *      padding[i, 1] specifies the number of element to be padded after the
   *      end of dimension i.
   * * 3: An optional {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   *      Available since NNAPI feature level 3.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   *      NOTE: Before NNAPI feature level 3, the pad value for
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} is undefined.
   *      Since NNAPI feature level 3, the pad value is always the logical zero.
   *
   * Available since NNAPI feature level 2.
   */
  ANEURALNETWORKS_SPACE_TO_BATCH_ND = 33,

  /**
   * Removes dimensions of size 1 from the shape of a tensor.
   *
   * Given a tensor input, this operation returns a tensor of the same
   * {@link OperandCode} with all dimensions of size 1 removed. If you don't
   * want to remove all size 1 dimensions, you can remove specific size 1
   * dimensions by specifying the axes (input1).
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor, the tensor to be squeezed.
   * * 1: An optional 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}. The
   *      dimensions to squeeze. If specified only squeezes the dimensions
   *      listed. Otherwise, squeezes all dimensions. The dimension index
   *      starts at 0. An error must be reported if squeezing a dimension that
   *      is not 1.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0. Contains the
   *      same data as input, but has one or more dimensions of size 1
   *      removed.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *      If all input dimensions are equal to 1 and are to be squeezed, the
   *      output shape is [1].
   *
   * Available since NNAPI feature level 2.
   */
  ANEURALNETWORKS_SQUEEZE = 34,

  /**
   * Extracts a strided slice of a tensor.
   *
   * Roughly speaking, this op extracts a slice of size (end - begin) / stride
   * from the given input tensor. Starting at the location specified by begin
   * the slice continues by adding stride to the index until all dimensions
   * are not less than end. Note that a stride can be negative, which causes a
   * reverse slice.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor, specifying the tensor to be sliced.
   * * 1: begin, a 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}. The
   *      starts of the dimensions of the input tensor to be sliced. The
   *      length must be of rank(input0).
   * * 2: end, a 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}. The
   *      ends of the dimensions of the input tensor to be sliced. The length
   *      must be of rank(input0).
   * * 3: strides, a 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}. The
   *      strides of the dimensions of the input tensor to be sliced. The
   *      length must be of rank(input0). The entries must be non-zero.
   * * 4: begin_mask, an {@link ANEURALNETWORKS_INT32} scalar. If the ith bit
   *      of begin_mask is set, begin[i] is ignored and the fullest possible
   *      range in that dimension is used instead.
   * * 5: end_mask, an {@link ANEURALNETWORKS_INT32} scalar. If the ith bit of
   *      end_mask is set, end[i] is ignored and the fullest possible range in
   *      that dimension is used instead.
   * * 6: shrink_axis_mask, an {@link ANEURALNETWORKS_INT32} scalar. If the
   *      ith bit of shrink_axis_mask is set, the ith dimension specification
   *      shrinks the dimensionality by 1, taking on the value at index
   *      begin[i]. In this case, the ith specification must define a
   *      slice of size 1, e.g. begin[i] = x, end[i] = x + 1.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0 and rank (n - k),
   *      where k is the number of bits set in shrink_axis_mask.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *      If shrink_axis_mask is true for all input dimensions, the output
   *      shape is [1].
   *
   * Available since NNAPI feature level 2.
   */
  ANEURALNETWORKS_STRIDED_SLICE = 35,

  /**
   * Element-wise subtraction of two tensors.
   *
   * Takes two input tensors of identical {@link OperandCode} and compatible
   * dimensions. The output is the result of subtracting the second input
   * tensor from the first one, optionally modified by an activation function.
   *
   * Two dimensions are compatible when:
   *     1. they are equal, or
   *     2. one of them is 1
   *
   * The size of the output is the maximum size along each dimension of the
   * input operands. It starts with the trailing dimensions, and works its way
   * forward.
   *
   * Example:
   *     input1.dimension =    {4, 1, 2}
   *     input2.dimension = {5, 4, 3, 1}
   *     output.dimension = {5, 4, 3, 2}
   *
   * Since NNAPI feature level 3, generic zero-sized input tensor is supported. Zero
   * dimension is only compatible with 0 or 1. The size of the output
   * dimension is zero if either of corresponding input dimension is zero.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   * * {@link ANEURALNETWORKS_TENSOR_INT32} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor, specifying the first input.
   * * 1: A tensor of the same {@link OperandCode}, and compatible dimensions
   *      as input0.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   *      For a {@link ANEURALNETWORKS_TENSOR_INT32} tensor,
   *      the {@link FuseCode} must be "NONE".
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint can be different from inputs' scale and zeroPoint.
   *
   * Available since NNAPI feature level 2.
   */
  ANEURALNETWORKS_SUB = 36,

  /**
   * Transposes the input tensor, permuting the dimensions according to the
   * perm tensor.
   *
   * The returned tensor's dimension i corresponds to the input dimension
   * perm[i]. If perm is not given, it is set to (n-1...0), where n is the
   * rank of the input tensor. Hence by default, this operation performs a
   * regular matrix transpose on 2-D input Tensors.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} (since NNAPI feature level 3)
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor, specifying the tensor to be transposed.
   *      Since NNAPI feature level 3, this tensor may be zero-sized.
   * * 1: An optional 1-D Tensor of {@link ANEURALNETWORKS_TENSOR_INT32},
   *      the permutation of the dimensions of the input tensor.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 2.
   */
  ANEURALNETWORKS_TRANSPOSE = 37,

  // Operations below are available since NNAPI feature level 3.

  /**
   * Computes the absolute value of a tensor, element-wise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_ABS = 38,

  /**
   * Returns the index of the largest element along an axis.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: An n-D tensor specifying the input. Must be non-empty.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar specifying the axis to
   *      reduce across. Negative index is used to specify axis from the
   *      end (e.g. -1 for the last axis). Must be in the range [-n, n).
   *
   * Outputs:
   * * 0: An (n - 1)-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor.
   *      If input is 1-dimensional, the output shape is [1].
   *
   * Available since NNAPI feature level 3.
   */
  // There is no underscore in ARG_MAX to avoid name conflict with
  // the macro defined in libc/kernel/uapi/linux/limits.h.
  ANEURALNETWORKS_ARGMAX = 39,

  /**
   * Returns the index of the smallest element along an axis.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: An n-D tensor specifying the input. Must be non-empty.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar specifying the axis to
   *      reduce across. Negative index is used to specify axis from the
   *      end (e.g. -1 for the last axis). Must be in the range [-n, n).
   *
   * Outputs:
   * * 0: An (n - 1)-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor.
   *      If input is 1-dimensional, the output shape is [1].
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_ARGMIN = 40,  // See ARGMAX for naming discussion.

  /**
   * Transform axis-aligned bounding box proposals using bounding box deltas.
   *
   * Given the positions of bounding box proposals and the corresponding
   * bounding box deltas for each class, return the refined bounding box
   * regions. The resulting bounding boxes are cliped against the edges of
   * the image.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM}
   *
   * Inputs:
   * * 0: A 2-D Tensor of shape [num_rois, 4], specifying the locations of the
   *      bounding box proposals, each line with format [x1, y1, x2, y2].
   *      For tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM},
   *      the zeroPoint must be 0 and the scale must be 0.125. Zero num_rois
   *      is supported for this tensor.
   * * 1: A 2-D Tensor of shape [num_rois, num_classes * 4], specifying the
   *      bounding box delta for each region of interest and each class. The
   *      bounding box deltas are organized in the following order
   *      [dx, dy, dw, dh], where dx and dy is the relative correction factor
   *      for the center position of the bounding box with respect to the width
   *      and height, dw and dh is the log-scale relative correction factor
   *      for the width and height. For input0 of type
   *      {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM}, this tensor should be
   *      of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} or
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}. Zero num_rois is
   *      supported for this tensor.
   * * 2: An 1-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor, of shape
   *      [num_rois], specifying the batch index of each box. Boxes with
   *      the same batch index are grouped together. Zero num_rois is
   *      supported for this tensor.
   * * 3: A 2-D Tensor of shape [batches, 2], specifying the information of
   *      each image in the batch, each line with format
   *      [image_height, image_width].
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0, with shape
   *      [num_rois, num_classes * 4], specifying the coordinates of each
   *      output bounding box for each class, with format [x1, y1, x2, y2].
   *      For type of {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM}, the
   *      scale must be 0.125 and the zero point must be 0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_AXIS_ALIGNED_BBOX_TRANSFORM = 41,

  /**
   * A recurrent neural network layer that applies an LSTM cell to a
   * sequence of inputs in forward and backward directions.
   *
   * The op supports cross-linking via an auxiliary input. Regular cell feeds
   * one input into the two RNN cells in the following way:
   *
   *       INPUT  (INPUT_REVERSED)
   *         |         |
   *    ---------------------
   *    | FW_LSTM   BW_LSTM |
   *    ---------------------
   *         |         |
   *      FW_OUT     BW_OUT
   *
   * An op with cross-linking takes two inputs and feeds them into the RNN
   * cells in the following way:
   *
   *       AUX_INPUT   (AUX_INPUT_REVERSED)
   *           |             |
   *     INPUT | (INPUT_R'D.)|
   *       |   |       |     |
   *    -----------------------
   *    |  \  /        \    / |
   *    | FW_LSTM     BW_LSTM |
   *    -----------------------
   *         |           |
   *      FW_OUT      BW_OUT
   *
   * The cross-linking mode is enabled iff auxiliary input and auxiliary
   * weights are present. While stacking this op on top of itself, this
   * allows to connect both forward and backward outputs from previous cell
   * to the next cell's input.
   *
   * Since NNAPI feature level 4 parallel linking mode is supported. The mode is
   * enabled if auxiliary input is present but auxiliary weights are omitted.
   * In this case, the cell feeds inputs into the RNN in the following way:
   *
   *       INPUT (AUX_INPUT_REVERSED)
   *         |         |
   *    ---------------------
   *    | FW_LSTM   BW_LSTM |
   *    ---------------------
   *         |         |
   *      FW_OUT     BW_OUT
   *
   * While stacking this op on top of itself, this allows to connect both
   * forward and backward outputs from previous cell to the next cell's
   * corresponding inputs.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: 3, either time-major or batch-major.
   *
   * All input and output tensors must be of the same type.
   *
   * Inputs:
   * * 0: The input.
   *      A 3-D tensor of shape:
   *        If time-major: [max_time, batch_size, input_size]
   *        If batch-major: [batch_size, max_time, input_size]
   *      where "max_time" is the number of timesteps (sequence length),
   *      "batch_size" corresponds to the batching dimension, and
   *      "input_size" is the size of the input.
   * * 1: The forward input-to-input weights. Optional.
   *      A 2-D tensor of shape [fw_num_units, input_size], where “fw_num_units”
   *      corresponds to the number of forward cell units.
   * * 2: The forward input-to-forget weights.
   *      A 2-D tensor of shape [fw_num_units, input_size].
   * * 3: The forward input-to-cell weights.
   *      A 2-D tensor of shape [fw_num_units, input_size].
   * * 4: The forward input-to-output weights.
   *      A 2-D tensor of shape [fw_num_units, input_size].
   * * 5: The forward recurrent-to-input weights. Optional.
   *      A 2-D tensor of shape [fw_num_units, fw_output_size], where “fw_output_size”
   *      corresponds to either the number of cell units (i.e., fw_num_units),
   *      or the second dimension of the “fw_projection_weights”, if defined.
   * * 6: The forward recurrent-to-forget weights.
   *      A 2-D tensor of shape [fw_num_units, fw_output_size].
   * * 7: The forward recurrent-to-cell weights.
   *      A 2-D tensor of shape [fw_num_units, fw_output_size].
   * * 8: The forward recurrent-to-output weights.
   *      A 2-D tensor of shape [fw_num_units, fw_output_size].
   * * 9: The forward cell-to-input weights. Optional.
   *      A 1-D tensor of shape [fw_num_units].
   * * 10: The forward cell-to-forget weights. Optional.
   *       A 1-D tensor of shape [fw_num_units].
   * * 11: The forward cell-to-output weights. Optional.
   *       A 1-D tensor of shape [fw_num_units].
   * * 12: The forward input gate bias. Optional.
   *       A 1-D tensor of shape [fw_num_units].
   * * 13: The forward forget gate bias.
   *       A 1-D tensor of shape [fw_num_units].
   * * 14: The forward cell gate bias.
   *       A 1-D tensor of shape [fw_num_units].
   * * 15: The forward output gate bias.
   *       A 1-D tensor of shape [fw_num_units].
   * * 16: The forward projection weights. Optional.
   *       A 2-D tensor of shape [fw_output_size, fw_num_units].
   * * 17: The forward projection bias. Optional.
   *       A 1-D tensor of shape [fw_output_size].
   * * 18: The backward input-to-input weights. Optional.
   *       A 2-D tensor of shape [bw_num_units, input_size], where “bw_num_units”
   *       corresponds to the number of backward cell units.
   * * 19: The backward input-to-forget weights.
   *       A 2-D tensor of shape [bw_num_units, input_size].
   * * 20: The backward input-to-cell weights.
   *       A 2-D tensor of shape [bw_num_units, input_size].
   * * 21: The backward input-to-output weights.
   *       A 2-D tensor of shape [bw_num_units, input_size].
   * * 22: The backward recurrent-to-input weights. Optional.
   *       A 2-D tensor of shape [bw_num_units, bw_output_size], where “bw_output_size”
   *       corresponds to either the number of cell units (i.e., “bw_num_units”),
   *       or the second dimension of the “bw_projection_weights”, if defined.
   * * 23: The backward recurrent-to-forget weights.
   *       A 2-D tensor of shape [bw_num_units, bw_output_size].
   * * 24: The backward recurrent-to-cell weights.
   *       A 2-D tensor of shape [bw_num_units, bw_output_size].
   * * 25: The backward recurrent-to-output weights.
   *       A 2-D tensor of shape [bw_num_units, bw_output_size].
   * * 26: The backward cell-to-input weights. Optional.
   *       A 1-D tensor of shape [bw_num_units].
   * * 27: The backward cell-to-forget weights. Optional.
   *       A 1-D tensor of shape [bw_num_units].
   * * 28: The backward cell-to-output weights. Optional.
   *       A 1-D tensor of shape [bw_num_units].
   * * 29: The backward input gate bias. Optional.
   *       A 1-D tensor of shape [bw_num_units].
   * * 30: The backward forget gate bias.
   *       A 1-D tensor of shape [bw_num_units].
   * * 31: The backward cell gate bias.
   *       A 1-D tensor of shape [bw_num_units].
   * * 32: The backward output gate bias.
   *       A 1-D tensor of shape [bw_num_units].
   * * 33: The backward projection weights. Optional.
   *       A 2-D tensor of shape [bw_output_size, bw_num_units].
   * * 34: The backward projection bias. Optional.
   *       A 1-D tensor of shape [bw_output_size].
   * * 35: The forward input activation state.
   *       A 2-D tensor of shape [batch_size, bw_output_size].
   * * 36: The forward input cell state.
   *       A 2-D tensor of shape [batch_size, bw_num_units].
   * * 37: The backward input activation state.
   *       A 2-D tensor of shape [batch_size, bw_output_size].
   * * 38: The backward input cell state.
   *       A 2-D tensor of shape [batch_size, bw_num_units].
   * * 39: The auxiliary input. Optional.
   *       A 3-D tensor of shape [max_time, batch_size, aux_input_size],
   *       where “batch_size” corresponds to the batching dimension, and
   *       “aux_input_size” is the size of the auxiliary input. Optional. See
   *       the docs above for the usage modes explanation.
   * * 40: The forward auxiliary input-to-input weights.
   *       Optional. See the docs above for the usage modes explanation.
   *       A 2-D tensor of shape [fw_num_units, aux_input_size].
   * * 41: The forward auxiliary input-to-forget weights.
   *       Optional. See the docs above for the usage modes explanation.
   *       A 2-D tensor of shape [fw_num_units, aux_input_size].
   * * 42: The forward auxiliary input-to-cell weights.
   *       Optional. See the docs above for the usage modes explanation.
   *       A 2-D tensor of shape [fw_num_units, aux_input_size].
   * * 43: The forward auxiliary input-to-output weights.
   *       Optional. See the docs above for the usage modes explanation.
   *       A 2-D tensor of shape [fw_num_units, aux_input_size].
   * * 44: The backward auxiliary input-to-input weights.
   *       Optional. See the docs above for the usage modes explanation.
   *       A 2-D tensor of shape [bw_num_units, aux_input_size].
   * * 45: The backward auxiliary input-to-forget weights.
   *       Optional. See the docs above for the usage modes explanation.
   *       A 2-D tensor of shape [bw_num_units, aux_input_size].
   * * 46: The backward auxiliary input-to-cell weights.
   *       Optional. See the docs above for the usage modes explanation.
   *       A 2-D tensor of shape [bw_num_units, aux_input_size].
   * * 47: The backward auxiliary input-to-output weights.
   *       Optional. See the docs above for the usage modes explanation.
   *       A 2-D tensor of shape [bw_num_units, aux_input_size].
   * * 48: The activation function.
   *       A value indicating the activation function:
   *       <ul>
   *       <li>0: None;
   *       <li>1: Relu;
   *       <li>3: Relu6;
   *       <li>4: Tanh;
   *       <li>6: Sigmoid.
   *       </ul>
   * * 49: The clipping threshold for the cell state, such
   *       that values are bound within [-cell_clip, cell_clip]. If set to 0.0
   *       then clipping is disabled.
   *       If all the input tensors have type {@link ANEURALNETWORKS_TENSOR_FLOAT32},
   *       this scalar must be of the type {@link ANEURALNETWORKS_FLOAT32},
   *       otherwise if all the input tensors have the type
   *       {@link ANEURALNETWORKS_TENSOR_FLOAT16}, this scalar must be
   *       of type {@link ANEURALNETWORKS_FLOAT16}.
   * * 50: The clipping threshold for the output from the
   *       projection layer, such that values are bound within
   *       [-proj_clip, proj_clip]. If set to 0.0 then clipping is disabled.
   *       If all the input tensors have type {@link ANEURALNETWORKS_TENSOR_FLOAT32},
   *       this scalar must be of the type {@link ANEURALNETWORKS_FLOAT32},
   *       otherwise if all the input tensors have the type
   *       {@link ANEURALNETWORKS_TENSOR_FLOAT16}, this scalar must be
   *       of type {@link ANEURALNETWORKS_FLOAT16}.
   * * 51: merge_outputs
   *       An {@link ANEURALNETWORKS_BOOL} scalar specifying if the outputs
   *       from forward and backward cells should be merged.
   * * 52: time_major
   *       An {@link ANEURALNETWORKS_BOOL} scalar specifying the shape format
   *       of input and output tensors.
   * * 53: The forward input layer normalization weights. Optional.
   *       A 1-D tensor of shape [fw_num_units]. Used to rescale normalized inputs
   *       to activation at input gate.
   * * 54: The forward forget layer normalization weights. Optional.
   *       A 1-D tensor of shape [fw_num_units]. Used to rescale normalized inputs
   *       to activation at forget gate.
   * * 55: The forward cell layer normalization weights. Optional.
   *       A 1-D tensor of shape [fw_num_units]. Used to rescale normalized inputs
   *       to activation at cell gate.
   * * 56: The forward output layer normalization weights. Optional.
   *       A 1-D tensor of shape [fw_num_units]. Used to rescale normalized inputs
   *       to activation at output gate.
   * * 57: The backward input layer normalization weights. Optional.
   *       A 1-D tensor of shape [bw_num_units]. Used to rescale normalized inputs
   *       to activation at input gate.
   * * 58: The backward forget layer normalization weights. Optional.
   *       A 1-D tensor of shape [bw_num_units]. Used to rescale normalized inputs
   *       to activation at forget gate.
   * * 59: The backward cell layer normalization weights. Optional.
   *       A 1-D tensor of shape [bw_num_units]. Used to rescale normalized inputs
   *       to activation at cell gate.
   * * 60: The backward output layer normalization weights. Optional.
   *       A 1-D tensor of shape [bw_num_units]. Used to rescale normalized inputs
   *       to activation at output gate.
   *
   * Outputs:
   * * 0: The forward output.
   *      A 3-D tensor of shape:
   *        If time-major and not merge_outputs:
   *          [max_time, batch_size, fw_output_size]
   *        If time-major and merge_outputs:
   *          [max_time, batch_size, fw_output_size + bw_output_size]
   *        If batch-major and not merge_outputs:
   *          [batch_size, max_time, fw_output_size]
   *        If batch-major and merge_outputs:
   *          [batch_size, max_time, fw_output_size + bw_output_size]
   * * 1: The backward output.  Unused if merge_outputs is true.
   *      A 3-D tensor of shape:
   *        If time-major: [max_time, batch_size, bw_output_size]
   *        If batch-major: [batch_size, max_time, bw_output_size]
   * * 2: The forward activation state output.
   *      A 2-D tensor of shape [batch_size, fw_output_size] containing an
   *      activation state from the last time step in the sequence. This
   *      output is optional and can be omitted. If this output is present
   *      then outputs 3-5 must be present as well.
   *      Available since NNAPI feature level 4.
   * * 3: The forward cell state output.
   *      A tensor of shape [batch_size, fw_cell_size] containing a cell state
   *      from the last time step in the sequence. This output is optional
   *      and can be omitted. If this output is present
   *      then outputs 2, 4, 5 must be present as well.
   *      Available since NNAPI feature level 4.
   * * 4: The backward activation state output.
   *      A 2-D tensor of shape [batch_size, bw_output_size] containing an
   *      activation state from the last time step in the sequence. This
   *      output is optional and can be omitted. If this output is present
   *      then outputs 2, 3, 5 must be present as well.
   *      Available since NNAPI feature level 4.
   * * 5: The backward cell state output.
   *      A tensor of shape [batch_size, bw_cell_size] containing a cell state
   *      from the last time step in the sequence. This output is optional
   *      and can be omitted. If this output is present
   *      then outputs 2-4 must be present as well.
   *      Available since NNAPI feature level 4.
   *
   * Available since NNAPI feature level 3.
   *
   * Important: As of NNAPI feature level 3, there is no way to get the output state tensors out
   * and NNAPI does not maintain internal states. This operator does not support the usage pattern
   * in which multiple cells are chained and state tensors are propagated.
   */
  ANEURALNETWORKS_BIDIRECTIONAL_SEQUENCE_LSTM = 42,

  /**
   * A recurrent neural network layer that applies a basic RNN cell to a
   * sequence of inputs in forward and backward directions.
   *
   * This Op unrolls the input along the sequence dimension, and implements
   * the following operation for each element in the sequence s =
   * 1...sequence_length:
   *   fw_outputs[s] = fw_state = activation(inputs[s] * fw_input_weights’ +
   *          fw_state * fw_recurrent_weights’ + fw_bias)
   *
   * And for each element in sequence t = sequence_length : 1
   *   bw_outputs[t] = bw_state = activation(inputs[t] * bw_input_weights’ +
   *          bw_state * bw_recurrent_weights’ + bw_bias)
   *
   * Where:
   * * “{fw,bw}_input_weights” is a weight matrix that multiplies the inputs;
   * * “{fw,bw}_recurrent_weights” is a weight matrix that multiplies the
   *    current “state” which itself is the output from the previous time step
   *    computation;
   * * “{fw,bw}_bias” is a bias vector (added to each output vector in the
   *    batch);
   * * “activation” is the function passed as the “fused_activation_function”
   *   argument (if not “NONE”).
   *
   * The op supports cross-linking via an auxiliary input. Regular cell feeds
   * one input into the two RNN cells in the following way:
   *
   *       INPUT  (INPUT_REVERSED)
   *         |         |
   *    ---------------------
   *    | FW_RNN     BW_RNN |
   *    ---------------------
   *         |         |
   *      FW_OUT     BW_OUT
   *
   * An op with cross-linking takes two inputs and feeds them into the RNN
   * cells in the following way:
   *
   *       AUX_INPUT   (AUX_INPUT_REVERSED)
   *           |             |
   *     INPUT | (INPUT_R'D.)|
   *       |   |       |     |
   *    -----------------------
   *    |  \  /        \    / |
   *    | FW_RNN       BW_RNN |
   *    -----------------------
   *         |           |
   *      FW_OUT      BW_OUT
   *
   * The cross-linking mode is enabled iff auxiliary input and auxiliary
   * weights are present. While stacking this op on top of itself, this
   * allows to connect both forward and backward outputs from previous cell
   * to the next cell's input.
   *
   * Since NNAPI feature level 4 parallel linking mode is supported. The mode is
   * enabled if auxiliary input is present but auxiliary weights are omitted.
   * In this case, the cell feeds inputs into the RNN in the following way:
   *
   *       INPUT (AUX_INPUT_REVERSED)
   *         |         |
   *    ---------------------
   *    | FW_RNN     BW_RNN |
   *    ---------------------
   *         |         |
   *      FW_OUT     BW_OUT
   *
   * While stacking this op on top of itself, this allows to connect both
   * forward and backward outputs from previous cell to the next cell's
   * corresponding inputs.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * The input tensors must all be the same type.
   *
   * Inputs:
   * * 0: input.
   *      A 3-D tensor. The shape is defined by the input 6 (timeMajor). If
   *      it is set to true, then the input has a shape [maxTime, batchSize,
   *      inputSize], otherwise the input has a shape [batchSize, maxTime,
   *      inputSize].
   * * 1: fwWeights.
   *      A 2-D tensor of shape [fwNumUnits, inputSize].
   * * 2: fwRecurrentWeights.
   *      A 2-D tensor of shape [fwNumUnits, fwNumUnits].
   * * 3: fwBias.
   *      A 1-D tensor of shape [fwNumUnits].
   * * 4: fwHiddenState.
   *      A 2-D tensor of shape [batchSize, fwNumUnits]. Specifies a hidden
   *      state input for the first time step of the computation.
   * * 5: bwWeights.
   *      A 2-D tensor of shape [bwNumUnits, inputSize].
   * * 6: bwRecurrentWeights.
   *      A 2-D tensor of shape [bwNumUnits, bwNumUnits].
   * * 7: bwBias.
   *      A 1-D tensor of shape [bwNumUnits].
   * * 8: bwHiddenState
   *      A 2-D tensor of shape [batchSize, bwNumUnits]. Specifies a hidden
   *      state input for the first time step of the computation.
   * * 9: auxInput.
   *      A 3-D tensor. The shape is defined by the input 6 (timeMajor). If
   *      it is set to true, then the input has a shape [maxTime, batchSize,
   *      auxInputSize], otherwise the input has a shape [batchSize, maxTime,
   *      auxInputSize]. Can be omitted. See the docs above for the usage
   *      modes explanation.
   * * 10:fwAuxWeights.
   *      A 2-D tensor of shape [fwNumUnits, auxInputSize]. Can be omitted.
   *      See the docs above for the usage modes explanation.
   * * 11:bwAuxWeights.
   *      A 2-D tensor of shape [bwNumUnits, auxInputSize]. Can be omitted.
   *      See the docs above for the usage modes explanation.
   * * 12:fusedActivationFunction.
   *      A {@link FuseCode} value indicating the activation function. If
   *      “NONE” is specified then it results in a linear activation.
   * * 13:timeMajor
   *      An {@link ANEURALNETWORKS_BOOL} scalar specifying the shape format
   *      of input and output tensors.
   * * 14:mergeOutputs
   *      An {@link ANEURALNETWORKS_BOOL} scalar specifying if the outputs
   *      from forward and backward cells are separate (if set to false) or
   *      concatenated (if set to true).
   * Outputs:
   * * 0: fwOutput.
   *      A 3-D tensor. The first two dimensions of the shape are defined by
   *      the input 6 (timeMajor) and the third dimension is defined by the
   *      input 14 (mergeOutputs). If timeMajor is set to true, then the first
   *      two dimensions are [maxTime, batchSize], otherwise they are set to
   *      [batchSize, maxTime]. If mergeOutputs is set to true, then the third
   *      dimension is equal to (fwNumUnits + bwNumUnits), otherwise it is set
   *      to fwNumUnits.
   * * 1: bwOutput.
   *      A 3-D tensor. If the input 14 (mergeOutputs) is set to true, then
   *      this tensor is not produced. The shape is defined by the input 6
   *      (timeMajor). If it is set to true, then the shape is set to
   *      [maxTime, batchSize, bwNumUnits], otherwise the shape is set to
   *      [batchSize, maxTime, bwNumUnits].
   * * 2: The forward hidden state output.
   *      A 2-D tensor of shape [batchSize, fwNumUnits] containing a hidden
   *      state from the last time step in the sequence. This output is
   *      optional and can be omitted. If this output is present then output
   *      3 must be present as well.
   *      Available since NNAPI feature level 4.
   * * 3: The backward hidden state output.
   *      A 2-D tensor of shape [batchSize, bwNumUnits] containing a hidden
   *      state from the last time step in the sequence. This output is
   *      optional and can be omitted. If this output is present then output
   *      2 must be present as well.
   *      Available since NNAPI feature level 4.
   *
   * Available since NNAPI feature level 3.
   *
   * Important: As of NNAPI feature level 3, there is no way to get the output state tensors out
   * and NNAPI does not maintain internal states. This operator does not support the usage pattern
   * in which multiple cells are chained and state tensors are propagated.
   */
  ANEURALNETWORKS_BIDIRECTIONAL_SEQUENCE_RNN = 43,

  /**
   * Greedily selects a subset of bounding boxes in descending order of score.
   *
   * This op applies NMS algorithm to each class. In each loop of execution,
   * the box with maximum score gets selected and removed from the pending set.
   * The scores of the rest of boxes are lowered according to the
   * intersection-over-union (IOU) overlapping with the previously selected
   * boxes and a specified NMS kernel method. Any boxes with score less
   * than a threshold are removed from the pending set.
   *
   * Three NMS kernels are supported:
   * * Hard:     score_new = score_old * (1 if IoU < threshold else 0)
   * * Linear:   score_new = score_old * (1 if IoU < threshold else 1 - IoU)
   * * Gaussian: score_new = score_old * exp(- IoU^2 / sigma)
   *
   * Axis-aligned bounding boxes are represented by its upper-left corner
   * coordinate (x1,y1) and lower-right corner coordinate (x2,y2). A valid
   * bounding box should satisfy x1 <= x2 and y1 <= y2.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Inputs:
   * * 0: A 2-D Tensor of shape [num_rois, num_classes], specifying the score
   *      of each bounding box proposal. The boxes are grouped by batches in the
   *      first dimension. Zero num_rois is supported for this tensor.
   * * 1: A 2-D Tensor specifying the bounding boxes of shape
   *      [num_rois, num_classes * 4], organized in the order [x1, y1, x2, y2].
   *      The boxes are grouped by batches in the first dimension. The sequential
   *      order of the boxes corresponds with input0. For input0 of type
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}, this tensor should be of
   *      {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM}, with zeroPoint of 0 and
   *      scale of 0.125.
   *      For input0 of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      this tensor should be of {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM},
   *      with zeroPoint of -128 and scale of 0.125.
   *      Zero num_rois is supported for this tensor.
   * * 2: A 1-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor, of shape
   *      [num_rois], specifying the batch index of each box. Boxes with
   *      the same batch index are grouped together.
   * * 3: An {@link ANEURALNETWORKS_FLOAT32} scalar, score_threshold. Boxes
   *      with scores lower than the threshold are filtered before sending
   *      to the NMS algorithm.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the maximum
   *      number of selected bounding boxes for each image. Set to a negative
   *      value for unlimited number of output bounding boxes.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the NMS
   *      kernel method, options are 0:hard, 1:linear, 2:gaussian.
   * * 6: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the IoU
   *      threshold in hard and linear NMS kernel. This field is ignored if
   *      gaussian kernel is selected.
   * * 7: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the sigma in
   *      gaussian NMS kernel. This field is ignored if gaussian kernel is
   *      not selected.
   * * 8: An {@link ANEURALNETWORKS_FLOAT32} scalar, nms_score_threshold.
   *      Boxes with scores lower than the threshold are dropped during the
   *      score updating phase in soft NMS.
   *
   * Outputs:
   * * 0: A 1-D Tensor of the same {@link OperandCode} as input0, with shape
   *      [num_output_rois], specifying the score of each output box. The boxes
   *      are grouped by batches, but the sequential order in each batch is not
   *      guaranteed. For type of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM},
   *      guaranteed. For type of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      or {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the scale and zero point must be the same as input0.
   * * 1: A 2-D Tensor of the same {@link OperandCode} as input1, with shape
   *      [num_output_rois, 4], specifying the coordinates of each
   *      output bounding box with the same format as input1. The sequential
   *      order of the boxes corresponds with output0. For type of
   *      {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM}, the scale must be
   *      0.125 and the zero point must be 0.
   * * 2: A 1-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor, of shape
   *      [num_output_rois], specifying the class of each output box. The
   *      sequential order of the boxes corresponds with output0.
   * * 3: A 1-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor, of shape
   *      [num_output_rois], specifying the batch index of each box. Boxes
   *      with the same batch index are grouped together.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_BOX_WITH_NMS_LIMIT = 44,

  /**
   * Casts a tensor to a type.
   *
   * This operation ignores the scale and zeroPoint of quanized tensors,
   * e.g. it treats a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} input
   * as a tensor of uint8 values.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * Since NNAPI feature level 4, casting tensors of the following
   * {@link OperandCode} to the same {@link OperandCode} is supported:
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM}
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: A tensor.
   *
   * Outputs:
   * * 0: A tensor with the same shape as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_CAST = 45,

  /**
   * Shuffle the channels of the input tensor.
   *
   * Given an input tensor and a integer value of num_groups, CHANNEL_SHUFFLE
   * divide the channel dimension into num_groups groups, and reorganize the
   * channels by grouping channels with the same index in each group.
   *
   * Along the channel dimension, the output is calculated using this formula:
   *
   *     output_channel[k * num_groups + g] = input_channel[g * group_size + k]
   *
   * where group_size = num_channels / num_groups
   *
   * The number of channels must be divisible by num_groups.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor, specifying the tensor to be shuffled.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar, specifying the number of
   *      groups.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, specifying the dimension
   *      channel shuffle would be performed on. Negative index is used to
   *      specify axis from the end (e.g. -1 for the last axis). Must be in
   *      the range [-n, n).
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} and same shape as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_CHANNEL_SHUFFLE = 46,

  /**
   * Apply postprocessing steps to bounding box detections.
   *
   * Bounding box detections are generated by applying transformation on a set
   * of predefined anchors with the bounding box deltas from bounding box
   * regression. A final step of hard NMS is applied to limit the number of
   * returned boxes.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Inputs:
   * * 0: A 3-D Tensor of shape [batches, num_anchors, num_classes], specifying
   *      the score of each anchor with each class. Class 0 for each
   *      [batches, num_anchors, 0] is background and will be ignored.
   * * 1: A 3-D Tensor of shape [batches, num_anchors, length_box_encoding], with
   *      the first four values in length_box_encoding specifying the bounding
   *      box deltas. The box deltas are encoded in the order of [dy, dx, dh, dw],
   *      where dy and dx is the linear-scale relative correction factor for the
   *      center position of the bounding box with respect to the width and height,
   *      dh and dw is the log-scale relative correction factor for the width and
   *      height. All the entries in length_box_encoding beyond the first four
   *      values are ignored in this operation.
   * * 2: A 2-D Tensor of shape [num_anchors, 4], specifying the shape of each
   *      predefined anchor, with format [ctr_y, ctr_x, h, w], where ctr_y and
   *      ctr_x are the center position of the box, and h and w are the height
   *      and the width.
   * * 3: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the scaling
   *      factor for dy in bounding box deltas.
   * * 4: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the scaling
   *      factor for dx in bounding box deltas.
   * * 5: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the scaling
   *      factor for dh in bounding box deltas.
   * * 6: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the scaling
   *      factor for dw in bounding box deltas.
   * * 7: An {@link ANEURALNETWORKS_BOOL} scalar, set to true to use regular
   *      multi-class NMS algorithm that do NMS separately for each class,
   *      set to false for a faster algorithm that only do one single NMS
   *      using the highest class score..
   * * 8: An {@link ANEURALNETWORKS_INT32} scalar, max_num_detections, specifying
   *      the maximum number of boxes for the output. Boxes with the lowest
   *      scores are discarded to meet the limit.
   * * 9: An {@link ANEURALNETWORKS_INT32} scalar, only used when input7 is
   *      set to false, specifying the maximum number of classes per detection.
   * * 10: An {@link ANEURALNETWORKS_INT32} scalar, only used when input7 is
   *       set to true, specifying the maximum number of detections when
   *       applying NMS algorithm for each single class.
   * * 11: A scalar, score_threshold. Boxes with scores lower than the
   *       threshold are filtered before sending to the NMS algorithm. The
   *       scalar must be of {@link ANEURALNETWORKS_FLOAT16} if input0 is of
   *       {@link ANEURALNETWORKS_TENSOR_FLOAT16} and of
   *       {@link ANEURALNETWORKS_FLOAT32} if input0 is of
   *       {@link ANEURALNETWORKS_TENSOR_FLOAT32}.
   * * 12: A scalar, specifying the IoU threshold for hard NMS. The scalar
   *       must be of {@link ANEURALNETWORKS_FLOAT16} if input0 is of
   *       {@link ANEURALNETWORKS_TENSOR_FLOAT16} and of
   *       {@link ANEURALNETWORKS_FLOAT32} if input0 is of
   *       {@link ANEURALNETWORKS_TENSOR_FLOAT32}.
   * * 13: An {@link ANEURALNETWORKS_BOOL} scalar, set to true to include
   *       background class in the list of label map for the output, set
   *       to false to not include the background. When the background
   *       class is included, it has label 0 and the output classes start
   *       at 1 in the label map, otherwise, the output classes start at 0.
   *
   * Outputs:
   * * 0: A 2-D tensor of the same {@link OperandCode} as input0, with shape
   *      [batches, max_num_detections], specifying the score of each output
   *      detections.
   * * 1: A 3-D tensor of shape [batches, max_num_detections, 4], specifying the
   *      coordinates of each output bounding box, with format
   *      [y1, x1, y2, x2].
   * * 2: A 2-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor, of shape
   *      [batches, max_num_detections], specifying the class label for each
   *      output detection.
   * * 3: An 1-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor, of shape [batches],
   *      specifying the number of valid output detections for each batch.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_DETECTION_POSTPROCESSING = 47,

  /**
   * For input tensors x and y, computes x == y elementwise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * This operation supports broadcasting.
   *
   * Inputs:
   * * 0: A tensor.
   * * 1: A tensor of the same {@link OperandCode} and dimensions compatible
   *      with input0.
   *
   * Outputs:
   * * 0: A tensor of {@link ANEURALNETWORKS_TENSOR_BOOL8}.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_EQUAL = 48,

  /**
   * Computes exponential of x element-wise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_EXP = 49,

  /**
   * Inserts a dimension of 1 into a tensor's shape.
   *
   * Given a tensor input, this operation inserts a dimension of 1 at the
   * given dimension index of input's shape. The dimension index starts at
   * zero; if you specify a negative dimension index, it is counted backward
   * from the end.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: An n-D tensor.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar specifying the dimension
   *      index to expand. Must be in the range [-(n + 1), (n + 1)).
   *
   * Outputs:
   * * 0: An (n + 1)-D tensor with the same {@link OperandCode} and data as
   *      input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_EXPAND_DIMS = 50,

  /**
   * Gathers values along an axis.
   *
   * Produces an output tensor with shape
   *     input0.dimension[:axis] + indices.dimension + input0.dimension[axis + 1:]
   * where:
   *     # Vector indices (output is rank(input0)).
   *     output[a_0, ..., a_n, i, b_0, ..., b_n] =
   *       input0[a_0, ..., a_n, indices[i], b_0, ..., b_n]
   *
   *     # Higher rank indices (output is rank(input0) + rank(indices) - 1).
   *     output[a_0, ..., a_n, i, ..., j, b_0, ... b_n] =
   *       input0[a_0, ..., a_n, indices[i, ..., j], b_0, ..., b_n]
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: An n-D tensor from which to gather values.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar specifying the axis.
   *      Negative index is used to specify axis from the end
   *      (e.g. -1 for the last axis). Must be in the range [-n, n).
   * * 2: A k-D tensor {@link ANEURALNETWORKS_TENSOR_INT32} of indices.
   *      The values must be in the bounds of the corresponding dimensions
   *      of input0.
   *
   * Outputs:
   * * 0: An (n + k - 1)-D tensor with the same {@link OperandCode} as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_GATHER = 51,

  /**
   * Generate aixs-aligned bounding box proposals.
   *
   * Bounding box proposals are generated by applying transformation on a set
   * of predefined anchors with the bounding box deltas from bounding box
   * regression. A final step of hard NMS is applied to limit the number of
   * returned boxes.
   *
   * Axis-aligned bounding boxes are represented by its upper-left corner
   * coordinate (x1,y1) and lower-right corner coordinate (x2,y2). A valid
   * bounding box should satisfy x1 <= x2 and y1 <= y2.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Inputs:
   * * 0: A 4-D Tensor specifying the score of each anchor at each
   *      location. With "NHWC" data layout, the tensor shape is
   *      [batches, height, width, num_anchors]. With "NCHW" data layout,
   *      the tensor shape is [batches, num_anchors, height, width].
   * * 1: A 4-D Tensor specifying the bounding box deltas. With "NHWC" data
   *      layout, the tensor shape is [batches, height, width, num_anchors * 4].
   *      With "NCHW" data layout, the tensor shape is
   *      [batches, num_anchors * 4, height, width]. The box deltas are encoded
   *      in the order of [dx, dy, dw, dh], where dx and dy is the linear-scale
   *      relative correction factor for the center position of the bounding box
   *      with respect to the width and height, dw and dh is the log-scale
   *      relative correction factor for the width and height. The last
   *      dimensions is the channel dimension.
   * * 2: A 2-D Tensor of shape [num_anchors, 4], specifying the shape of each
   *      predefined anchor, with format [x1, y1, x2, y2]. For input0 of type
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} or
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}, this tensor should be of
   *      {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}, with scale of 0.125.
   * * 3: A 2-D Tensor of shape [batches, 2], specifying the size of
   *      each image in the batch, with format [image_height, image_width].
   *      For input0 of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} or
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}, this
   *      tensor should be of {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}, with
   *      scale of 0.125.
   * * 4: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the ratio
   *      from the height of original image to the height of feature map.
   * * 5: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the ratio
   *      from the width of original image to the width of feature map.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, specifying the maximum
   *      number of boxes before going into the hard NMS algorithm. Boxes
   *      with the lowest scores are discarded to meet the limit. Set to
   *      a non-positive value for unlimited number.
   * * 7: An {@link ANEURALNETWORKS_INT32} scalar, specifying the maximum
   *      number of boxes returning from the hard NMS algorithm. Boxes
   *      with the lowest scores are discarded to meet the limit. Set to
   *      a non-positive value for unlimited number.
   * * 8: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the IoU
   *      threshold for hard NMS.
   * * 9: An {@link ANEURALNETWORKS_FLOAT32} scalar, min_size. Boxes with
   *      height or width lower than the absolute threshold are filtered out.
   * * 10: An {@link ANEURALNETWORKS_BOOL} scalar, set to true to specify
   *       NCHW data layout for input0 and input1. Set to false for NHWC.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0, of shape
   *      [num_output_rois], specifying the score of each output box.
   *      The boxes are grouped by batches, but the sequential order in
   *      each batch is not guaranteed. For type of
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} or
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}, the scale and zero
   *      point must be the same as input0.
   * * 1: A tensor of the same {@link OperandCode} as input3, of shape
   *      [num_output_rois, 4], specifying the coordinates of each output
   *      bounding box for each class, with format [x1, y1, x2, y2].
   *      The sequential order of the boxes corresponds with output0.
   *      For type of {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM}, the
   *      scale must be 0.125 and the zero point must be 0.
   * * 2: A 1-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor, of shape
   *      [num_output_rois], specifying the batch index of each box. Boxes
   *      with the same batch index are grouped together.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_GENERATE_PROPOSALS = 52,

  /**
   * For input tensors x and y, computes x > y elementwise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * This operation supports broadcasting.
   *
   * Inputs:
   * * 0: A tensor.
   * * 1: A tensor of the same {@link OperandCode} and dimensions compatible
   *      with input0.
   *
   * Outputs:
   * * 0: A tensor of {@link ANEURALNETWORKS_TENSOR_BOOL8}.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_GREATER = 53,
  /**
   * For input tensors x and y, computes x >= y elementwise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * This operation supports broadcasting.
   *
   * Inputs:
   * * 0: A tensor.
   * * 1: A tensor of the same {@link OperandCode} and dimensions compatible
   *      with input0.
   *
   * Outputs:
   * * 0: A tensor of {@link ANEURALNETWORKS_TENSOR_BOOL8}.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_GREATER_EQUAL = 54,

  /**
   * Performs a grouped 2-D convolution operation.
   *
   * Given an input tensor of shape [batches, height, width, depth_in] and a
   * filter tensor of shape [depth_out, filter_height, filter_width, depth_group]
   * containing depth_out convolutional filters of depth depth_group, GROUPED_CONV
   * applies a group of different filters to each input channel group, then
   * concatenates the results together.
   *
   * Specifically, the input channels are divided into num_groups groups, each with
   * depth depth_group, i.e. depth_in = num_groups * depth_group. The convolutional
   * filters are also divided into num_groups groups, i.e. depth_out is divisible
   * by num_groups. GROUPED_CONV applies each group of filters to the corresponding
   * input channel group, and the result are concatenated together.
   *
   * The output dimensions are functions of the filter dimensions, stride, and
   * padding.
   *
   * The values in the output tensor are computed as:
   *
   *     output[b, i, j, g * channel_multiplier + q] =
   *         sum_{di, dj, dk} (
   *             input[b, strides[1] * i + di, strides[2] * j + dj,
   *                   g * depth_group + dk] *
   *             filter[g * channel_multiplier + q, di, dj, dk]
   *         ) + bias[channel]
   *
   * where channel_multiplier = depth_out / num_groups
   *
   * Supported tensor {@link OperandCode} configurations:
   * * 16 bit floating point:
   * * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} for input, filter, output, and bias.
   *
   * * 32 bit floating point:
   * * * {@link ANEURALNETWORKS_TENSOR_FLOAT32} for input, filter, output, and bias.
   *
   * * Quantized:
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} for input, filter, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (with scale set to
   * * * input.scale * filter.scale).
   *
   * * Quantized signed (since NNAPI feature level 4):
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} for input, filter, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (with scale set to
   * * * input.scale * filter.scale).
   *
   * * Quantized with symmetric per channel quantization for the filter:
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} for input, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL} for filter.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (scale set to 0.0,
   * * * each value scaling is separate and equal to input.scale * filter.scales[channel]).
   *
   * * Quantized signed with filter symmetric per channel quantization
   *   (since NNAPI feature level 4):
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} for input, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL} for filter.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (scale set to 0.0,
   * * * each value scaling is separate and equal to input.scale * filter.scales[channel]).
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   *
   * Both explicit padding and implicit padding are supported.
   *
   * Inputs (explicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth_in],
   *      specifying the input, where depth_in = num_groups * depth_group.
   * * 1: A 4-D tensor, of shape
   *      [depth_out, filter_height, filter_width, depth_group], specifying
   *      the filter, where depth_out must be divisible by num_groups.  For
   *      tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL}
   *      the channel dimension (channelDim at
   *      {@link ANeuralNetworksSymmPerChannelQuantParams}) must be set to 0.
   * * 2: A 1-D tensor, of shape [depth_out], specifying the bias. For input
   *      tensor of type {@link ANEURALNETWORKS_TENSOR_FLOAT32} or
   *      {@link ANEURALNETWORKS_TENSOR_FLOAT16}, the bias must be of the same type.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint
   *      of 0 and bias_scale == input_scale * filter_scale. For filter tensor
   *      of {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL}, the bias
   *      should be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint of
   *      0 and bias_scale of 0. The actual scale of each value 'i' is equal to
   *      bias_scale[i] = input_scale * filter_scale[i].
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the left, in the ‘width’ dimension.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the right, in the ‘width’ dimension.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the top, in the ‘height’ dimension.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the bottom, in the ‘height’ dimension.
   * * 7: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 8: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 9: An {@link ANEURALNETWORKS_INT32} scalar, specifying the number of
   *      groups.
   * * 10: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *       {@link FuseCode} values. Specifies the activation to
   *       invoke on the result.
   * * 11: An {@link ANEURALNETWORKS_BOOL} scalar, set to true to specify
   *       NCHW data layout for input0 and output0. Set to false for NHWC.
   *
   * Inputs (implicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth_in],
   *      specifying the input, where depth_in = num_groups * depth_group.
   * * 1: A 4-D tensor, of shape
   *      [depth_out, filter_height, filter_width, depth_group], specifying
   *      the filter, where depth_out must be divisible by num_groups.  For
   *      tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL}
   *      the channel dimension (ANeuralNetworksSymmPerChannelQuantParams::channelDim)
   *      must be set to 0.
   * * 2: A 1-D tensor, of shape [depth_out], specifying the bias. For input
   *      tensor of type {@link ANEURALNETWORKS_TENSOR_FLOAT32} or
   *      {@link ANEURALNETWORKS_TENSOR_FLOAT16}, the bias must be of the same
   *      {@link ANEURALNETWORKS_TENSOR_FLOAT16}, the bias must be of the same type.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint
   *      of 0 and bias_scale == input_scale * filter_scale. For filter tensor
   *      of {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL}, the bias
   *      should be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint of
   *      0 and bias_scale of 0. The actual scale of each value 'i' is equal to
   *      bias_scale[i] = input_scale * filter_scale[i].
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the implicit
   *      padding scheme, has to be one of the
   *      {@link PaddingCode} values.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, specifying the number of
   *      groups.
   * * 7: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   * * 8: An {@link ANEURALNETWORKS_BOOL} scalar, set to true to specify
   *      NCHW data layout for input0 and output0. Set to false for NHWC.
   *
   * Outputs:
   * * 0: The output 4-D tensor, of shape
   *      [batches, out_height, out_width, depth_out].
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint can be different from inputs' scale and zeroPoint.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_GROUPED_CONV_2D = 55,

  /**
   * Localize the maximum keypoints from heatmaps.
   *
   * This operation approximates the accurate maximum keypoint scores and
   * indices after bicubic upscaling by using Taylor expansion up to the
   * quadratic term.
   *
   * The bounding box is represented by its upper-left corner coordinate
   * (x1,y1) and lower-right corner coordinate (x2,y2) in the original image.
   * A valid bounding box should satisfy x1 <= x2 and y1 <= y2.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   *
   * Inputs:
   * * 0: A 4-D Tensor of shape
   *      [num_boxes, heatmap_size, heatmap_size, num_keypoints],
   *      specifying the heatmaps, the height and width of heatmaps should
   *      be the same, and must be greater than or equal to 2.
   * * 1: A 2-D Tensor of shape [num_boxes, 4], specifying the bounding boxes,
   *      each with format [x1, y1, x2, y2]. For input0 of type
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}, this tensor should
   *      be of {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM}, with zeroPoint
   *      of 0 and scale of 0.125.
   *      For input0 of type
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}, this tensor
   *      should be of {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM}, with
   *      zeroPoint of -128 and scale of 0.125.
   * * 2: An {@link ANEURALNETWORKS_BOOL} scalar, set to true to specify
   *      NCHW data layout for input0. Set to false for NHWC.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0, with shape
   *      [num_boxes, num_keypoints], specifying score of the keypoints.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} or
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint can be different from input0 scale and zeroPoint.
   * * 1: A tensor of the same {@link OperandCode} as input1, with shape
   *      [num_boxes, num_keypoints, 2], specifying the location of
   *      the keypoints, the second dimension is organized as
   *      [keypoint_x, keypoint_y].
   *      For type of {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM}, the
   *      scale must be 0.125 and the zero point must be 0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_HEATMAP_MAX_KEYPOINT = 56,

  /**
   * Applies instance normalization to the input tensor.
   *
   * The values in the output tensor are computed as:
   *
   *     output[b, h, w, c] =
   *         (input[b, h, w, c] - mean[b, c]) * gamma /
   *         sqrt(var[b, c] + epsilon) + beta
   *
   * Where the mean and variance are computed across the spatial dimensions:
   *
   *     mean[b, c] =
   *         sum_{h, w}(input[b, h, w, c]) / sum(1)
   *
   *     var[b, c] =
   *         sum_{h, w}(pow(input[b, h, w, c] - mean[b, c], 2)) / sum(1)
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   *
   * Inputs:
   * * 0: An n-D tensor, specifying the tensor to be normalized.
   * * 1: A scalar, specifying gamma, the scale applied to the normalized
   *      tensor. The scalar must be of {@link ANEURALNETWORKS_FLOAT16} if
   *      input0 is of {@link ANEURALNETWORKS_TENSOR_FLOAT16} and of
   *      {@link ANEURALNETWORKS_FLOAT32} if input0 is of
   *      {@link ANEURALNETWORKS_TENSOR_FLOAT32}.
   * * 2: A scalar, specifying beta, the offset applied to the normalized
   *      tensor. The scalar must be of {@link ANEURALNETWORKS_FLOAT16} if
   *      input0 is of {@link ANEURALNETWORKS_TENSOR_FLOAT16} and of
   *      {@link ANEURALNETWORKS_FLOAT32} if input0 is of
   *      {@link ANEURALNETWORKS_TENSOR_FLOAT32}.
   * * 3: A scalar, specifying epsilon, the small value added to variance to
   *      avoid dividing by zero. The scalar must be of {@link ANEURALNETWORKS_FLOAT16} if
   *      input0 is of {@link ANEURALNETWORKS_TENSOR_FLOAT16} and of
   *      {@link ANEURALNETWORKS_FLOAT32} if input0 is of
   *      {@link ANEURALNETWORKS_TENSOR_FLOAT32}.
   * * 4: An {@link ANEURALNETWORKS_BOOL} scalar, set to true to specify
   *      NCHW data layout for input0 and output0. Set to false for NHWC.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} and same shape as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_INSTANCE_NORMALIZATION = 57,

  /**
   * For input tensors x and y, computes x < y elementwise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * This operation supports broadcasting.
   *
   * Inputs:
   * * 0: A tensor.
   * * 1: A tensor of the same {@link OperandCode} and dimensions compatible
   *      with input0.
   *
   * Outputs:
   * * 0: A tensor of {@link ANEURALNETWORKS_TENSOR_BOOL8}.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_LESS = 58,

  /**
   * For input tensors x and y, computes x <= y elementwise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * This operation supports broadcasting.
   *
   * Inputs:
   * * 0: A tensor.
   * * 1: A tensor of the same {@link OperandCode} and dimensions compatible
   *      with input0.
   *
   * Outputs:
   * * 0: A tensor of {@link ANEURALNETWORKS_TENSOR_BOOL8}.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_LESS_EQUAL = 59,

  /**
   * Computes natural logarithm of x element-wise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_LOG = 60,

  /**
   * Returns the truth value of x AND y element-wise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   *
   * Supported tensor rank: from 1
   *
   * This operation supports broadcasting.
   *
   * Inputs:
   * * 0: A tensor of {@link ANEURALNETWORKS_TENSOR_BOOL8}.
   * * 1: A tensor of {@link ANEURALNETWORKS_TENSOR_BOOL8} and dimensions
   *      compatible with input0.
   *
   * Outputs:
   * * 0: A tensor of {@link ANEURALNETWORKS_TENSOR_BOOL8}.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_LOGICAL_AND = 61,

  /**
   * Computes the truth value of NOT x element-wise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_LOGICAL_NOT = 62,

  /**
   * Returns the truth value of x OR y element-wise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   *
   * Supported tensor rank: from 1
   *
   * This operation supports broadcasting.
   *
   * Inputs:
   * * 0: A tensor of {@link ANEURALNETWORKS_TENSOR_BOOL8}.
   * * 1: A tensor of {@link ANEURALNETWORKS_TENSOR_BOOL8} and dimensions
   *      compatible with input0.
   *
   * Outputs:
   * * 0: A tensor of {@link ANEURALNETWORKS_TENSOR_BOOL8}.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_LOGICAL_OR = 63,

  /**
   * Computes the log softmax activations given logits.
   *
   * The output is calculated using this formula:
   *
   *     output = logits * beta - log(reduce_sum(exp(logits * beta), axis))
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor specifying the input logits.
   * * 1: A scalar, specifying the positive scaling factor for the exponent,
   *      beta.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT16}, the beta
   *      value must be of {@link ANEURALNETWORKS_FLOAT16}.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT32}, the beta
   *      value must be of {@link ANEURALNETWORKS_FLOAT32}.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar specifying the axis to
   *      reduce across. Negative index is used to specify axis from the
   *      end (e.g. -1 for the last axis). Must be in the range [-n, n).
   *
   * Outputs:
   * * 0: The output tensor of the same {@link OperandCode} and shape as
   *      input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_LOG_SOFTMAX = 64,

  /**
   * Returns the element-wise maximum of two tensors.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor.
   * * 1: A tensor of the same {@link OperandCode} and compatible dimensions
   *      with input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} tensor,
   *      the scales and zeroPoint can be different from input0 scale and zeroPoint.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} tensor,
   *      the scale and zeroPoint can be different from inputs' scale and zeroPoint.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_MAXIMUM = 65,

  /**
   * Returns the element-wise minimum of two tensors.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor.
   * * 1: A tensor of the same {@link OperandCode} and compatible dimensions
   *      with input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} tensor,
   *      the scales and zeroPoint can be different from input0 scale and zeroPoint.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} tensor,
   *      the scale and zeroPoint can be different from inputs' scale and zeroPoint.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_MINIMUM = 66,

  /**
   * Computes numerical negative value element-wise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_NEG = 67,

  /**
   * For input tensors x and y, computes x != y elementwise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * This operation supports broadcasting.
   *
   * Inputs:
   * * 0: A tensor.
   * * 1: A tensor of the same {@link OperandCode} and dimensions compatible
   *      with input0.
   *
   * Outputs:
   * * 0: A tensor of {@link ANEURALNETWORKS_TENSOR_BOOL8}.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_NOT_EQUAL = 68,

  /**
   * Pads a tensor with the given constant value according to the specified
   * paddings.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor, specifying the tensor to be padded.
   * * 1: A 2-D Tensor of {@link ANEURALNETWORKS_TENSOR_INT32}, the paddings
   *      for each spatial dimension of the input tensor. The shape of the
   *      tensor must be {rank(input0), 2}.
   *      padding[i, 0] specifies the number of elements to be padded in the
   *      front of dimension i.
   *      padding[i, 1] specifies the number of elements to be padded after
   *      the end of dimension i.
   * * 2: A scalar specifying the value to use for padding input0.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT16}, the
   *      pad value must be of {@link ANEURALNETWORKS_FLOAT16}.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT32}, the
   *      pad value must be of {@link ANEURALNETWORKS_FLOAT32}.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the pad value must be of {@link ANEURALNETWORKS_INT32}. The
   *      scale and zeroPoint are assumed to be the same as in input0.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0. The
   *      output tensor has the same rank as input0, and each
   *      dimension of the output tensor has the same size as the
   *      corresponding dimension of the input tensor plus the size
   *      of the padding:
   *          output0.dimension[i] =
   *              padding[i, 0] + input0.dimension[i] + padding[i, 1]
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_PAD_V2 = 69,

  /**
   * Computes the power of one value to another.
   *
   * Given a tensor base and a tensor exponent, this operation computes
   * base^exponent elementwise.
   *
   * This operations supports broadcasting. The size of the output is the
   * maximum size along each dimension of the input operands. It starts with
   * the trailing dimensions, and works its way forward.
   *
   * For example:
   *     base.dimension     =    {4, 1, 2}
   *     exponent.dimension = {5, 4, 3, 1}
   *     output.dimension   = {5, 4, 3, 2}
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: A tensor specifying the base.
   * * 1: A tensor specifying the exponent.
   *
   * Outputs:
   * * 0: An output tensor.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_POW = 70,

  /**
   * Parametric Rectified Linear Unit.
   *
   * It follows: f(x) = alpha * x for x < 0, f(x) = x for x >= 0, where alpha
   * is a learned array with the same {@link OperandCode} and compatible
   * dimensions as input x.
   *
   * Two dimensions are compatible when:
   *     1. they are equal, or
   *     2. one of them is 1
   *
   * The size of the output is the maximum size along each dimension of the
   * input operands. It starts with the trailing dimensions, and works its way
   * forward.
   *
   * Example:
   *     input.dimension  =    {4, 1, 2}
   *     alpha.dimension  = {5, 4, 3, 1}
   *     output.dimension = {5, 4, 3, 2}
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: A tensor, specifying the input.
   * * 1: A tensor of the same {@link OperandCode}, and compatible dimensions
   *      as input0, specifying the alpha.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scales and zeroPoint can be different from input0 scale and zeroPoint.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_PRELU = 71,

  /**
   * Quantizes the input tensor.
   *
   * The formula for {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} output tensor is:
   *
   *     output = max(0, min(255, round(input / scale) + zeroPoint)
   *
   * The formula for {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} output
   * tensor is:
   *
   *     output = max(-128, min(127, round(input / scale) + zeroPoint)
   *
   * Supported input tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported output tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: A tensor, may be zero-sized.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0, but with
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} or.
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_QUANTIZE = 72,

  /**
   * A version of quantized LSTM, using 16 bit quantization for internal
   * state.
   *
   * There is no projection layer, so cell state size is equal to the output
   * size.
   *
   * Inputs:
   * * 0: A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and shape [numBatches, inputSize] specifying the input to the LSTM
   *      cell. Tensor is quantized with a fixed quantization range of
   *      [-1, 127/128] (scale = 1/128, zeroPoint = 128).
   * * 1: The input-to-input weights.
   *      A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and shape [outputSize, inputSize] specifying input-to-input part of
   *      weights for fully-connected layer inside the LSTM cell.
   *      Quantization zero point and scale must be the same across all the
   *      weights.
   * * 2: The input-to-forget weights.
   *      A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and shape [outputSize, inputSize] specifying input-to-forget part of
   *      weights for fully-connected layer inside the LSTM cell.
   *      Quantization zero point and scale must be the same across all the
   *      weights.
   * * 3: The input-to-cell weights.
   *      A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and shape [outputSize, inputSize] specifying input-to-cell part of
   *      weights for fully-connected layer inside the LSTM cell.
   *      Quantization zero point and scale must be the same across all the
   *      weights.
   * * 4: The input-to-output weights.
   *      A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and shape [outputSize, inputSize] specifying input-to-output part of
   *      weights for fully-connected layer inside the LSTM cell.
   *      Quantization zero point and scale must be the same across all the
   *      weights.
   * * 5: The recurrent-to-input weights.
   *      A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and shape [outputSize, outputSize] specifying recurrent-to-input part
   *      of weights for fully-connected layer inside the LSTM cell.
   *      Quantization zero point and scale must be the same across all the
   *      weights.
   * * 6: The recurrent-to-forget weights.
   *      A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and shape [outputSize, outputSize] specifying recurrent-to-forget
   *      part of weights for fully-connected layer inside the LSTM cell.
   *      Quantization zero point and scale must be the same across all the
   *      weights.
   * * 7: The recurrent-to-cell weights.
   *      A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and shape [outputSize, outputSize] specifying recurrent-to-cell part
   *      of weights for fully-connected layer inside the LSTM cell.
   *      Quantization zero point and scale must be the same across all the
   *      weights.
   * * 8: The recurrent-to-output weights.
   *      A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and shape [outputSize, outputSize] specifying recurrent-to-output
   *      part of weights for fully-connected layer inside the LSTM cell.
   *      Quantization zero point and scale must be the same across all the
   *      weights.
   * * 9: The input gate bias.
   *      A 1-D tensor of type {@link ANEURALNETWORKS_TENSOR_INT32} and shape
   *      [outputSize] specifying the bias for the fully-connected layer
   *      inside the LSTM cell. Bias is quantized with scale being a product
   *      of input and weights scales and zeroPoint equal to 0.
   * * 10:The forget gate bias.
   *      A 1-D tensor of type {@link ANEURALNETWORKS_TENSOR_INT32} and shape
   *      [outputSize] specifying the bias for the fully-connected layer
   *      inside the LSTM cell. Bias is quantized with scale being a product
   *      of input and weights scales and zeroPoint equal to 0.
   * * 11:The cell bias.
   *      A 1-D tensor of type {@link ANEURALNETWORKS_TENSOR_INT32} and shape
   *      [outputSize] specifying the bias for the fully-connected layer
   *      inside the LSTM cell. Bias is quantized with scale being a product
   *      of input and weights scales and zeroPoint equal to 0.
   * * 12:The output gate bias.
   *      A 1-D tensor of type {@link ANEURALNETWORKS_TENSOR_INT32} and shape
   *      [outputSize] specifying the bias for the fully-connected layer
   *      inside the LSTM cell. Bias is quantized with scale being a product
   *      of input and weights scales and zeroPoint equal to 0.
   * * 13: A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   *       and shape [numBatches, outputSize] specifying the cell state from the
   *       previous time step of the LSTM cell. It is quantized using a
   *       quantization range of [-2^4, 2^4 * 32767/32768] (scale = 2^4 /
   *       32768, zeroPoint = 0).
   * * 14: A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *       and shape [numBathes, outputSize] specifying the output of the LSTM
   *       cell from previous time-step. Tensor is quantized with a fixed
   *       quantization range of [-1, 127/128] (scale = 1/128, zeroPoint =
   *       128).
   *
   *
   * Outputs:
   * * 0: A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   *      and shape [numBatches, outputSize] which contains a cell state from
   *      the current time step. Tensor is quantized using a quantization
   *      range of [-2^4, 2^4 * 32767/32768] (scale = 2^4 / 32768, zeroPoint =
   *      0).
   * * 1: A 2-D tensor of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and shape [numBathes, outputSize] which contains the output value.
   *      Tensor is quantized with a fixed quantization range of [-1, 127/128]
   *      (scale = 1/128, zeroPoint = 128).
   */
  ANEURALNETWORKS_QUANTIZED_16BIT_LSTM = 73,

  /**
   * Draws samples from a multinomial distribution.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Inputs:
   * * 0: A 2-D tensor with shape [batches, classes], specifying the
   *      unnormalized log-probabilities for all classes.
   * * 1: A scalar {@link ANEURALNETWORKS_INT32}, specifying the number of
   *      independent samples to draw for each row slice.
   * * 2: A 1-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor with shape [2],
   *      specifying seeds used to initialize the random distribution. If both
   *      provided seeds are 0, both will be randomly generated.
   * Outputs:
   * * 0: A 2-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor with shape
   *      [batches, samples], containing the drawn samples.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_RANDOM_MULTINOMIAL = 74,

  /**
   * Reduces a tensor by computing the "logical and" of elements along given
   * dimensions.
   *
   * If keep_dims is true, the reduced dimensions are
   * retained with length 1. Otherwise, the rank of the tensor is reduced by
   * 1 for each entry in dimensions.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor.
   * * 1: A 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}. The dimensions
   *      to reduce. Dimension values must be in the range [-n, n).
   * * 2: An {@link ANEURALNETWORKS_BOOL} scalar, keep_dims. If true,
   *      retains reduced dimensions with length 1.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      If all dimensions are reduced and keep_dims is false, the output
   *      shape is [1].
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_REDUCE_ALL = 75,

  /**
   * Reduces a tensor by computing the "logical or" of elements along given
   * dimensions.
   *
   * If keep_dims is true, the reduced dimensions are
   * retained with length 1. Otherwise, the rank of the tensor is reduced by
   * 1 for each entry in dimensions.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor.
   * * 1: A 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}. The dimensions
   *      to reduce. Dimension values must be in the range [-n, n).
   * * 2: An {@link ANEURALNETWORKS_BOOL} scalar, keep_dims. If true,
   *      retains reduced dimensions with length 1.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      If all dimensions are reduced and keep_dims is false, the output
   *      shape is [1].
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_REDUCE_ANY = 76,

  /**
   * Reduces a tensor by computing the maximum of elements along given
   * dimensions.
   *
   * If keep_dims is true, the reduced dimensions are
   * retained with length 1. Otherwise, the rank of the tensor is reduced by
   * 1 for each entry in dimensions.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor.
   * * 1: A 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}. The dimensions
   *      to reduce. Dimension values must be in the range [-n, n).
   * * 2: An {@link ANEURALNETWORKS_BOOL} scalar, keep_dims. If true,
   *      retains reduced dimensions with length 1.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      If all dimensions are reduced and keep_dims is false, the output
   *      shape is [1].
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_REDUCE_MAX = 77,

  /**
   * Reduces a tensor by computing the minimum of elements along given
   * dimensions.
   *
   * If keep_dims is true, the reduced dimensions are
   * retained with length 1. Otherwise, the rank of the tensor is reduced by
   * 1 for each entry in dimensions.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor.
   * * 1: A 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}. The dimensions
   *      to reduce. Dimension values must be in the range [-n, n).
   * * 2: An {@link ANEURALNETWORKS_BOOL} scalar, keep_dims. If true,
   *      retains reduced dimensions with length 1.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      If all dimensions are reduced and keep_dims is false, the output
   *      shape is [1].
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_REDUCE_MIN = 78,

  /**
   * Reduces a tensor by multiplying elements along given dimensions.
   *
   * If keep_dims is true, the reduced dimensions are
   * retained with length 1. Otherwise, the rank of the tensor is reduced by
   * 1 for each entry in dimensions.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor.
   * * 1: A 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}. The dimensions
   *      to reduce. Dimension values must be in the range [-n, n).
   * * 2: An {@link ANEURALNETWORKS_BOOL} scalar, keep_dims. If true,
   *      retains reduced dimensions with length 1.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      If all dimensions are reduced and keep_dims is false, the output
   *      shape is [1].
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_REDUCE_PROD = 79,

  /**
   * Reduces a tensor by summing elements along given dimensions.
   *
   * If keep_dims is true, the reduced dimensions are
   * retained with length 1. Otherwise, the rank of the tensor is reduced by
   * 1 for each entry in dimensions.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: up to 4
   *
   * Inputs:
   * * 0: An n-D tensor.
   * * 1: A 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}. The dimensions
   *      to reduce. Dimension values must be in the range [-n, n).
   * * 2: An {@link ANEURALNETWORKS_BOOL} scalar, keep_dims. If true,
   *      retains reduced dimensions with length 1.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0.
   *      If all dimensions are reduced and keep_dims is false, the output
   *      shape is [1].
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_REDUCE_SUM = 80,

  /**
   * Select and scale the feature map of each region of interest to a unified
   * output size by average pooling sampling points from bilinear interpolation.
   *
   * The region of interest is represented by its upper-left corner coordinate
   * (x1,y1) and lower-right corner coordinate (x2,y2) in the original image.
   * A spatial scaling factor is applied to map into feature map coordinate.
   * A valid region of interest should satisfy x1 <= x2 and y1 <= y2.
   *
   * No rounding is applied in this operation. The sampling points are unified
   * distributed in the pooling bin and their values are calculated by bilinear
   * interpolation.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   *
   * Inputs:
   * * 0: A 4-D tensor, specifying the feature map.
   * * 1: A 2-D Tensor of shape [num_rois, 4], specifying the locations of
   *      the regions of interest, each line with format [x1, y1, x2, y2].
   *      For input0 of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM},
   *      this tensor should be of {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM},
   *      with zeroPoint of 0 and scale of 0.125. Zero num_rois is
   *      supported for this tensor.
   * * 2: An 1-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor, of shape
   *      [num_rois], specifying the batch index of each box. Boxes with
   *      the same batch index are grouped together. Zero num_rois is
   *      supported for this tensor.
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the output
   *      height of the output tensor.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the output
   *      width of the output tensor.
   * * 5: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the ratio
   *      from the height of original image to the height of feature map.
   * * 6: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the ratio
   *      from the width of original image to the width of feature map.
   * * 7: An {@link ANEURALNETWORKS_INT32} scalar, specifying the number of
   *      sampling points in height dimension used to compute the output.
   *      Set to 0 for adaptive value of ceil(roi_height/out_height).
   * * 8: An {@link ANEURALNETWORKS_INT32} scalar, specifying the number of
   *      sampling points in width dimension used to compute the output.
   *      Set to 0 for adaptive value of ceil(roi_width/out_width).
   * * 9: An {@link ANEURALNETWORKS_BOOL} scalar, set to true to specify
   *      NCHW data layout for input0 and output0. Set to false for NHWC.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0. The output
   *      shape is [num_rois, out_height, out_width, depth].
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint can be different from the input0 scale and zeroPoint.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_ROI_ALIGN = 81,

  /**
   * Select and scale the feature map of each region of interest to a unified
   * output size by max-pooling.
   *
   * The region of interest is represented by its upper-left corner coordinate
   * (x1,y1) and lower-right corner coordinate (x2,y2) in the original image.
   * A spatial scaling factor is applied to map into feature map coordinate.
   * A valid region of interest should satisfy x1 <= x2 and y1 <= y2.
   *
   * Rounding is applied in this operation to ensure integer boundary for
   * regions of interest and pooling bins.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   *
   * Inputs:
   * * 0: A 4-D tensor, specifying the feature map.
   * * 1: A 2-D Tensor of shape [num_rois, 4], specifying the locations of
   *      the regions of interest, each line with format [x1, y1, x2, y2].
   *      For input0 of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      this tensor should be of {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM},
   *      with zeroPoint of 0 and scale of 0.125.
   * * 2: An 1-D {@link ANEURALNETWORKS_TENSOR_INT32} tensor, of shape
   *      [num_rois], specifying the batch index of each box. Boxes with
   *      the same batch index are grouped together.
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the output
   *      height of the output tensor.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the output
   *      width of the output tensor.
   * * 5: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the ratio
   *      from the height of original image to the height of feature map.
   * * 6: An {@link ANEURALNETWORKS_FLOAT32} scalar, specifying the ratio
   *      from the width of original image to the width of feature map.
   * * 7: An {@link ANEURALNETWORKS_BOOL} scalar, set to true to specify
   *      NCHW data layout for input0 and output0. Set to false for NHWC.
   *
   * Outputs:
   * * 0: A tensor of the same {@link OperandCode} as input0. The output
   *      shape is [num_rois, out_height, out_width, depth].
   *      For input0 of type {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_ROI_POOLING = 82,

  /**
   * Computes reciprocal of square root of x element-wise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_RSQRT = 83,

  /**
   * Using a tensor of booleans c and input tensors x and y select values
   * elementwise from both input tensors:
   *
   * O[i] = C[i] ? x[i] : y[i].
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: A tensor of type {@link ANEURALNETWORKS_TENSOR_BOOL8} acting as a
   *      mask that chooses, based on the value at each element, whether the
   *      corresponding element in the output should be taken from input1 (if
   *      true) or input2 (if false).
   * * 1: An input tensor of the same shape as input0.
   * * 2: An input tensor of the same shape and type as input1.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scales and zeroPoint can be different from input1 scale and zeroPoint.
   *
   * Outputs:
   * * 0: A tensor of the same type and shape as input1 and input2.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} tensor,
   *      the scale and zeroPoint can be different from inputs' scale and zeroPoint.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_SELECT = 84,

  /**
   * Computes sin of x element-wise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_SIN = 85,

  /**
   * Extracts a slice of specified size from the input tensor starting at a
   * specified location.
   *
   * The starting location is specified as a 1-D tensor containing offsets
   * for each dimension. The size is specified as a 1-D tensor containing
   * either size of a slice along corresponding dimension or -1. In the latter
   * case, all the remaining elements in dimension are included in the slice.
   *
   * A sum of begin offset and a size of a slice must not exceed size of a
   * corresponding dimension.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: An n-D tensor to take slice from, may be zero-sized.
   * * 1: A 1-D tensor of type {@link ANEURALNETWORKS_TENSOR_INT32} specifying
   *      the beginning indices of the slice in each dimension.
   * * 2: A 1-D tensor of type {@link ANEURALNETWORKS_TENSOR_INT32} specifying
   *      the size of the slice in each dimension.
   *
   * Outputs:
   * * 0: An n-D tensor of the same type as the input containing the slice.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      its scale and zeroPoint has to be same as the input0 scale and zeroPoint.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_SLICE = 86,

  /**
   * Splits a tensor along a given axis into num_splits subtensors.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: An n-D tensor to split.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar specifying the axis along
   *      which to split.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar indicating the number of
   *      splits along given axis. Must evenly divide axis size.
   *
   * Outputs:
   * * 0 ~ (num_splits - 1): Resulting subtensors.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_SPLIT = 87,

  /**
   * Computes square root of x element-wise.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor.
   *
   * Outputs:
   * * 0: The output tensor of same shape as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_SQRT = 88,

  /**
   * Constructs a tensor by tiling a given tensor.
   *
   * This operation creates a new tensor by replicating `input` `multiples`
   * times. The output tensor's i-th dimension has `input.dims(i) * multiples[i]`
   * elements, and the values of `input` are replicated `multiples[i]` times
   * along the i-th dimension.
   * For example, tiling `[a b c d]` by `[2]` produces `[a b c d a b c d]`.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: input, an n-D tensor specifying the input.
   * * 1: multiples, a 1-D tensor of {@link ANEURALNETWORKS_TENSOR_INT32}.
   *      The length of multiples must be n.
   *
   * Outputs:
   * * 0: A tiled tensor of the same {@link OperandCode} and rank as `input`.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_TILE = 89,

  /**
   * Finds values and indices of the k largest entries for the last dimension.
   *
   * Resulting values in each dimensions are sorted in descending order. If
   * two values are equal, the one with larger index appears first.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: from 1
   *
   * Inputs:
   * * 0: input, an n-D tensor specifying the input.
   * * 1: k, an {@link ANEURALNETWORKS_INT32} scalar, specifying the number of
   *      top elements to look for along the last dimension.
   *
   * Outputs:
   * * 0: An n-D tensor of the same type as the input, containing the k
   *      largest elements along each last dimensional slice.
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   * * 1: An n-D tensor of type {@link ANEURALNETWORKS_TENSOR_INT32}
   *      containing the indices of values within the last dimension of input.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_TOPK_V2 = 90,

  /**
   * Performs the transpose of 2-D convolution operation.
   *
   * This operation is sometimes called "deconvolution" after Deconvolutional
   * Networks, but is actually the transpose (gradient) of
   * {@link ANEURALNETWORKS_CONV_2D} rather than an actual deconvolution.
   *
   * The output dimensions are functions of the filter dimensions, stride, and
   * padding.
   *
   * Supported tensor {@link OperandCode} configurations:
   * * 16 bit floating point:
   * * * {@link ANEURALNETWORKS_TENSOR_FLOAT16} for input, filter, output, and bias.
   *
   * * 32 bit floating point:
   * * * {@link ANEURALNETWORKS_TENSOR_FLOAT32} for input, filter, output, and bias.
   *
   * * Quantized:
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} for input, filter, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (with scale set to
   * * * input.scale * filter.scale).
   *
   * * Quantized with symmetric per channel quantization for the filter:
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} for input, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL} for filter.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (scale set to 0.0,
   * * * each value scaling is separate and equal to input.scale * filter.scales[channel]).
   *
   * Available since NNAPI feature level 4:
   * * Quantized signed (since NNAPI feature level 4):
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} for input, filter, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (with scale set to
   * * * input.scale * filter.scale).
   *
   * * Quantized signed with filter symmetric per channel quantization
   *   (since NNAPI feature level 4):
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} for input, and output.
   * * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL} for filter.
   * * * {@link ANEURALNETWORKS_TENSOR_INT32} for bias (scale set to 0.0,
   * * * each value scaling is separate and equal to input.scale * filter.scales[channel]).
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   *
   * Both explicit padding and implicit padding are supported.
   *
   * Inputs (explicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth_in],
   *      specifying the input.
   *      Since API level 29, zero batches is supported for this tensor.
   * * 1: A 4-D tensor, of shape
   *      [depth_out, filter_height, filter_width, depth_in], specifying the
   *      filter. For tensor of type
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL} the channel
   *      dimension (ANeuralNetworksSymmPerChannelQuantParams::channelDim) must be set to 0.
   * * 2: A 1-D tensor, of shape [depth_out], specifying the bias. For input
   *      tensor of type {@link ANEURALNETWORKS_TENSOR_FLOAT32} or
   *      {@link ANEURALNETWORKS_TENSOR_FLOAT16}, the bias must be of the
   *      same type.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32},
   *      with zeroPoint of 0 and bias_scale == input_scale * filter_scale.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL},
   *      the bias must be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint of 0
   *      and bias_scale of 0. The actual scale of each value 'i' is equal to
   *      bias_scale[i] = input_scale * filter_scale[i].
   * * 3: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the left, in the ‘width’ dimension.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the right, in the ‘width’ dimension.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the top, in the ‘height’ dimension.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, specifying the padding on
   *      the bottom, in the ‘height’ dimension.
   * * 7: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 8: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 9: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   * * 10: An {@link ANEURALNETWORKS_BOOL} scalar, set to true to specify
   *       NCHW data layout for input0 and output0. Set to false for NHWC.
   *
   * Inputs (implicit padding):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth_in],
   *      specifying the input.
   *      Since API level 29, zero batches is supported for this tensor.
   * * 1: A 4-D tensor, of shape
   *      [depth_out, filter_height, filter_width, depth_in], specifying the
   *      filter. For tensor of type
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL} the channel
   *      dimension (ANeuralNetworksSymmPerChannelQuantParams::channelDim) must be set to 0.
   * * 2: A 1-D tensor, of shape [depth_out], specifying the bias. For input
   *      tensor of type {@link ANEURALNETWORKS_TENSOR_FLOAT32} or
   *      {@link ANEURALNETWORKS_TENSOR_FLOAT16}, the bias should be of the
   *      same type.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   *      and {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED},
   *      the bias should be of {@link ANEURALNETWORKS_TENSOR_INT32},
   *      with zeroPoint of 0 and bias_scale == input_scale * filter_scale.
   *      For filter tensor of {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL},
   *      the bias must be of {@link ANEURALNETWORKS_TENSOR_INT32}, with zeroPoint of 0
   *      and bias_scale of 0. The actual scale of each value 'i' is equal to
   *      bias_scale[i] = input_scale * filter_scale[i].
   * * 3: An {@link ANEURALNETWORKS_TENSOR_INT32} tensor, specifying the output
   *      tensor shape.
   * * 4: An {@link ANEURALNETWORKS_INT32} scalar, specifying the implicit
   *      padding scheme, has to be one of the
   *      {@link PaddingCode} values.
   * * 5: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘width’ dimension.
   * * 6: An {@link ANEURALNETWORKS_INT32} scalar, specifying the stride when
   *      walking through input in the ‘height’ dimension.
   * * 7: An {@link ANEURALNETWORKS_INT32} scalar, and has to be one of the
   *      {@link FuseCode} values. Specifies the activation to
   *      invoke on the result.
   * * 8: An {@link ANEURALNETWORKS_BOOL} scalar, set to true to specify
   *      NCHW data layout for input0 and output0. Set to false for NHWC.
   *
   * Outputs:
   * * 0: The output 4-D tensor, of shape
   *      [batches, out_height, out_width, depth_out].
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint can be different from inputs' scale and zeroPoint.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_TRANSPOSE_CONV_2D = 91,

  /**
   * A recurrent neural network specified by an LSTM cell.
   *
   * Performs (fully) dynamic unrolling of input.
   *
   * This Op unrolls the input along the time dimension, and implements the
   * following operation for each element in the sequence
   * s = 1...sequence_length:
   *   outputs[s] = projection(state = activation(LSTMOp(inputs[s])))
   *
   * Where LSTMOp is the LSTM op as in {@link ANEURALNETWORKS_LSTM},
   * the "projection" is an optional projection layer from state and output
   * and the “activation” is the function passed as the
   * “fused_activation_function” argument (if not “NONE”).
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: 3, either time-major or batch-major.
   *
   * All input and output tensors must be of the same type.
   *
   * Inputs:
   * * 0: The input (\f$x_t\f$).
   *      A 3-D tensor of shape:
   *        If time-major: [max_time, batch_size, input_size]
   *        If batch-major: [batch_size, max_time, input_size]
   *      where “max_time” is the number of timesteps (sequence length),
   *      “batch_size” corresponds to the batching dimension, and
   *      “input_size” is the size of the input.
   * * 1: The input-to-input weights (\f$W_{xi}\f$). Optional.
   *      A 2-D tensor of shape [num_units, input_size], where “num_units”
   *      corresponds to the number of cell units.
   * * 2: The input-to-forget weights (\f$W_{xf}\f$).
   *      A 2-D tensor of shape [num_units, input_size].
   * * 3: The input-to-cell weights (\f$W_{xc}\f$).
   *      A 2-D tensor of shape [num_units, input_size].
   * * 4: The input-to-output weights (\f$W_{xo}\f$).
   *      A 2-D tensor of shape [num_units, input_size].
   * * 5: The recurrent-to-input weights (\f$W_{hi}\f$). Optional.
   *      A 2-D tensor of shape [num_units, output_size], where “output_size”
   *      corresponds to either the number of cell units (i.e., “num_units”),
   *      or the second dimension of the “projection_weights”, if defined.
   * * 6: The recurrent-to-forget weights (\f$W_{hf}\f$).
   *      A 2-D tensor of shape [num_units, output_size].
   * * 7: The recurrent-to-cell weights (\f$W_{hc}\f$).
   *      A 2-D tensor of shape [num_units, output_size].
   * * 8: The recurrent-to-output weights (\f$W_{ho}\f$).
   *      A 2-D tensor of shape [num_units, output_size].
   * * 9: The cell-to-input weights (\f$W_{ci}\f$). Optional.
   *      A 1-D tensor of shape [num_units].
   * * 10:The cell-to-forget weights (\f$W_{cf}\f$). Optional.
   *      A 1-D tensor of shape [num_units].
   * * 11:The cell-to-output weights (\f$W_{co}\f$). Optional.
   *      A 1-D tensor of shape [num_units].
   * * 12:The input gate bias (\f$b_i\f$). Optional.
   *      A 1-D tensor of shape [num_units].
   * * 13:The forget gate bias (\f$b_f\f$).
   *      A 1-D tensor of shape [num_units].
   * * 14:The cell bias (\f$b_c\f$).
   *      A 1-D tensor of shape [num_units].
   * * 15:The output gate bias (\f$b_o\f$).
   *      A 1-D tensor of shape [num_units].
   * * 16:The projection weights (\f$W_{proj}\f$). Optional.
   *      A 2-D tensor of shape [output_size, num_units].
   * * 17:The projection bias (\f$b_{proj}\f$). Optional.
   *      A 1-D tensor of shape [output_size].
   * * 18:The output state (in) (\f$h_{t-1}\f$).
   *      A 2-D tensor of shape [batch_size, output_size].
   * * 19:The cell state (in) (\f$C_{t-1}\f$).
   *      A 2-D tensor of shape [batch_size, num_units].
   * * 20:The activation function (\f$g\f$).
   *      A value indicating the activation function:
   *      <ul>
   *      <li>0: None;
   *      <li>1: Relu;
   *      <li>3: Relu6;
   *      <li>4: Tanh;
   *      <li>6: Sigmoid.
   *      </ul>
   * * 21:The clipping threshold (\f$t_{cell}\f$) for the cell state, such
   *      that values are bound within [-cell_clip, cell_clip]. If set to 0.0
   *      then clipping is disabled.
   * * 22:The clipping threshold (\f$t_{proj}\f$) for the output from the
   *      projection layer, such that values are bound within
   *      [-proj_clip, proj_clip]. If set to 0.0 then clipping is disabled.
   * * 23:Time-major if true, batch-major if false.
   * * 24:The input layer normalization weights. Optional.
   *      A 1-D tensor of shape [num_units]. Used to rescale normalized inputs
   *      to activation at input gate.
   * * 25:The forget layer normalization weights. Optional.
   *      A 1-D tensor of shape [num_units]. Used to rescale normalized inputs
   *      to activation at forget gate.
   * * 26:The cell layer normalization weights. Optional.
   *      A 1-D tensor of shape [num_units]. Used to rescale normalized inputs
   *      to activation at cell gate.
   * * 27:The output layer normalization weights. Optional.
   *      A 1-D tensor of shape [num_units]. Used to rescale normalized inputs
   *      to activation at output gate.
   *
   * Outputs:
   * * 0: The output (\f$o_t\f$).
   *      A 3-D tensor of shape:
   *        If time-major: [max_time, batch_size, output_size]
   *        If batch-major: [batch_size, max_time, output_size]
   * * 1: A tensor of shape [batch_size, output_size] containing a hidden
   *      state from the last time step in the sequence. This output is
   *      optional and can be omitted. If this output is present then
   *      output #2 must be present as well.
   *      Available since NNAPI feature level 4.
   * * 2: A tensor of shape [batch_size, cell_size] containing a cell state
   *      from the last time step in the sequence. This output is optional
   *      and can be omitted.
   *      Available since NNAPI feature level 4.
   *
   * Available since NNAPI feature level 3.
   *
   * Important: As of NNAPI feature level 3, there is no way to get the output state tensors out
   * and NNAPI does not maintain internal states. This operator does not support the usage pattern
   * in which multiple cells are chained and state tensors are propagated.
   */
  ANEURALNETWORKS_UNIDIRECTIONAL_SEQUENCE_LSTM = 92,

  /**
   * A recurrent neural network layer that applies a basic RNN cell to a
   * sequence of inputs.
   *
   * This layer unrolls the input along the sequence dimension, and implements
   * the following operation
   * for each element in the sequence s = 1...sequence_length:
   *   outputs[s] = state = activation(inputs[s] * input_weights’ + state *
   *   recurrent_weights’ + bias)
   *
   * Where:
   * * “input_weights” is a weight matrix that multiplies the inputs;
   * * “recurrent_weights” is a weight matrix that multiplies the current
   *    “state” which itself is the output from the previous time step
   *    computation;
   * * “bias” is a bias vector (added to each output vector in the batch);
   * * “activation” is the function passed as the “fused_activation_function”
   *   argument (if not “NONE”).
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * The input tensors must all be the same type.
   *
   * Inputs:
   * * 0: input.
   *      A 3-D tensor. The shape is defined by the input 6 (timeMajor). If
   *      it is set to 1, then the input has a shape [maxTime, batchSize,
   *      inputSize], otherwise the input has a shape [batchSize, maxTime,
   *      inputSize].
   * * 1: weights.
   *      A 2-D tensor of shape [numUnits, inputSize].
   * * 2: recurrent_weights.
   *      A 2-D tensor of shape [numUnits, numUnits].
   * * 3: bias.
   *      A 1-D tensor of shape [numUnits].
   * * 4: hidden state
   *      A 2-D tensor of shape [batchSize, numUnits]. Specifies a hidden
   *      state input for the first time step of the computation.
   * * 5: fusedActivationFunction.
   *      A {@link FuseCode} value indicating the activation function. If
   *      “NONE” is specified then it results in a linear activation.
   * * 6: timeMajor
   *      An {@link ANEURALNETWORKS_INT32} scalar specifying the shape format
   *      of input and output tensors. Must be set to either 0 or 1.
   * Outputs:
   * * 0: output.
   *      A 3-D tensor. The shape is defined by the input 6 (timeMajor). If
   *      it is set to 1, then the output has a shape [maxTime, batchSize,
   *      numUnits], otherwise the output has a shape [batchSize, maxTime,
   *      numUnits].
   * * 1: A tensor of shape [batchSize, numUnits] containing hidden state
   *      from the last time step in the sequence. This output is optional
   *      and can be omitted.
   *      Available since NNAPI feature level 4.
   *
   * Available since NNAPI feature level 3.
   *
   * Important: As of NNAPI feature level 3, there is no way to get the output state tensors out
   * and NNAPI does not maintain internal states. This operator does not support the usage pattern
   * in which multiple cells are chained and state tensors are propagated.
   */
  ANEURALNETWORKS_UNIDIRECTIONAL_SEQUENCE_RNN = 93,

  /**
   * Resizes images to given size using the nearest neighbor interpretation.
   *
   * Resized images must be distorted if their output aspect ratio is not the
   * same as input aspect ratio. The corner pixels of output may not be the
   * same as corner pixels of input.
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} (since NNAPI feature level 4)
   *
   * Supported tensor rank: 4, with "NHWC" or "NCHW" data layout.
   * With the default data layout NHWC, the data is stored in the order of:
   * [batch, height, width, channels]. Alternatively, the data layout could
   * be NCHW, the data storage order of: [batch, channels, height, width].
   *
   * Both resizing by shape and resizing by scale are supported.
   *
   * Inputs (resizing by shape):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth], specifying
   *      the input. Zero batches is supported for this tensor.
   * * 1: An {@link ANEURALNETWORKS_INT32} scalar, specifying the output
   *      width of the output tensor.
   * * 2: An {@link ANEURALNETWORKS_INT32} scalar, specifying the output
   *      height of the output tensor.
   * * 3: An {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   * * 4: Align corners. An optional {@link ANEURALNETWORKS_BOOL}
   *      scalar, default to false.  If True, the centers of the 4 corner
   *      pixels of the input and output tensors are aligned, preserving the
   *      values at the corner pixels.
   *      Available since NNAPI feature level 4.
   * * 5: Half pixel centers. An optional {@link ANEURALNETWORKS_BOOL}
   *      scalar, default to false. If True, the pixel centers are assumed to
   *      be at (0.5, 0.5). This is the default behavior of image.resize in
   *      TF 2.0. If this parameter is True, then align_corners parameter
   *      must be False.
   *      Available since NNAPI feature level 4.
   *
   * Inputs (resizing by scale):
   * * 0: A 4-D tensor, of shape [batches, height, width, depth], specifying
   *      the input. Zero batches is supported for this tensor.
   * * 1: A scalar, specifying width_scale, the scaling factor of the width
   *      dimension from the input tensor to the output tensor. The output
   *      width is calculated as new_width = floor(width * width_scale).
   *      The scalar must be of {@link ANEURALNETWORKS_FLOAT16} if input0 is
   *      of {@link ANEURALNETWORKS_TENSOR_FLOAT16} and of
   *      {@link ANEURALNETWORKS_FLOAT32} otherwise.
   * * 2: A scalar, specifying height_scale, the scaling factor of the height
   *      dimension from the input tensor to the output tensor. The output
   *      height is calculated as new_height = floor(height * height_scale).
   *      The scalar must be of {@link ANEURALNETWORKS_FLOAT16} if input0 is
   *      of {@link ANEURALNETWORKS_TENSOR_FLOAT16} and of
   *      {@link ANEURALNETWORKS_FLOAT32} otherwise.
   * * 3: An {@link ANEURALNETWORKS_BOOL} scalar, default to false.
   *      Set to true to specify NCHW data layout for input0 and output0.
   * * 4: Align corners. An optional {@link ANEURALNETWORKS_BOOL}
   *      scalar, default to false.  If True, the centers of the 4 corner
   *      pixels of the input and output tensors are aligned, preserving the
   *      values at the corner pixels.
   *      Available since NNAPI feature level 4.
   * * 5: Half pixel centers. An optional {@link ANEURALNETWORKS_BOOL}
   *      scalar, default to false. If True, the pixel centers are assumed to
   *      be at (0.5, 0.5). This is the default behavior of image.resize in
   *      TF 2.0. If this parameter is True, then align_corners parameter
   *      must be False.
   *      Available since NNAPI feature level 4.
   *
   * Outputs:
   * * 0: The output 4-D tensor, of shape
   *      [batches, new_height, new_width, depth].
   *      For a {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM} and
   *      {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED} tensor,
   *      the scale and zeroPoint must be the same as input0.
   *
   * Available since NNAPI feature level 3.
   */
  ANEURALNETWORKS_RESIZE_NEAREST_NEIGHBOR = 94,

  // Operations below are available since NNAPI feature level 4.

  /**
   * Quantized version of {@link ANEURALNETWORKS_LSTM}.
   *
   * The input and the output use asymmetric quantized types, while the rest
   * use symmetric ones.
   *
   * Inputs:
   * * 0: The input to the LSTM cell.
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}
   *      Shape: [batchSize, inputSize]
   * * 1: The input-to-input weights. Optional.
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM}
   *      Shape: [numUnits, inputSize]
   * * 2: The input-to-forget weights.
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM}
   *      Shape: [numUnits, inputSize]
   * * 3: The input-to-cell weights.
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM}
   *      Shape: [numUnits, inputSize]
   * * 4: The input-to-output weights.
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM}
   *      Shape: [numUnits, inputSize]
   * * 5: The recurrent-to-input weights. Optional.
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM}
   *      Shape: [numUnits, outputSize]
   * * 6: The recurrent-to-forget weights.
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM}
   *      Shape: [numUnits, outputSize]
   * * 7: The recurrent-to-cell weights.
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM}
   *      Shape: [numUnits, outputSize]
   * * 8: The recurrent-to-output weights.
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM}
   *      Shape: [numUnits, outputSize]
   * * 9: The cell-to-input weights (for peephole). Optional.
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   *      Shape: [numUnits]
   * * 10: The cell-to-forget weights (for peephole). Optional.
   *       Type: {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   *       Shape: [numUnits]
   * * 11: The cell-to-output weights (for peephole). Optional.
   *       Type: {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   *       Shape: [numUnits]
   * * 12: The input gate bias. Quantized with scale being the
   *       product of input and weights scales and zeroPoint equal to 0.
   *       Optional.
   *       Type: {@link ANEURALNETWORKS_TENSOR_INT32}
   *       Shape: [numUnits]
   * * 13: The forget gate bias. Quantized with scale being the
   *       product of input and weights scales and zeroPoint equal to 0.
   *       Type: {@link ANEURALNETWORKS_TENSOR_INT32}
   *       Shape: [numUnits]
   * * 14: The cell bias. Quantized with scale being the
   *       product of input and weights scales and zeroPoint equal to 0.
   *       Type: {@link ANEURALNETWORKS_TENSOR_INT32}
   *       Shape: [numUnits]
   * * 15: The output gate bias. Quantized with scale being the
   *       product of input and weights scales and zeroPoint equal to 0.
   *       Type: {@link ANEURALNETWORKS_TENSOR_INT32}
   *       Shape: [numUnits]
   * * 16: The projection weights. Optional.
   *       Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM}
   *       Shape: [outputSize, numUnits]
   * * 17: The projection bias. Quantized with scale being the
   *       product of input and weights scales and zeroPoint equal to 0.
   *       Optional.
   *       Type: {@link ANEURALNETWORKS_TENSOR_INT32}
   *       Shape: [outputSize]
   * * 18: The output from the previous time step.
   *       Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}
   *       Shape: [batchSize, outputSize]
   * * 19: The cell state from the previous time step.
   *       Type: {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   *       Shape: [batchSize, numUnits]
   * * 20: The input layer normalization weights. Used to rescale
   *       normalized inputs to activation at input gate. Optional.
   *       Type: {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   *       Shape: [numUnits]
   * * 21: The forget layer normalization weights. Used to
   *       rescale normalized inputs to activation at forget gate. Optional.
   *       Type: {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   *       Shape: [numUnits]
   * * 22: The cell layer normalization weights. Used to rescale
   *       normalized inputs to activation at cell gate. Optional.
   *       Type: {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   *       Shape: [numUnits]
   * * 23: The output layer normalization weights. Used to
   *       rescale normalized inputs to activation at output gate. Optional.
   *       Type: {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   *       Shape: [numUnits]
   * * 24: The cell clip. If provided the cell state is clipped
   *       by this value prior to the cell output activation. Optional.
   *       Type: {@link ANEURALNETWORKS_FLOAT32}.
   * * 25: The projection clip. If provided and projection is enabled,
   *       this is used for clipping the projected values. Optional.
   *       Type: {@link ANEURALNETWORKS_FLOAT32}.
   * * 26: The scale of the intermediate result of matmul,
   *       i.e. input to layer normalization, at input gate.
   *       Type: {@link ANEURALNETWORKS_FLOAT32}.
   * * 27: The scale of the intermediate result of matmul,
   *       i.e. input to layer normalization, at forget gate.
   *       Type: {@link ANEURALNETWORKS_FLOAT32}.
   * * 28: The scale of the intermediate result of matmul,
   *       i.e. input to layer normalization, at cell gate.
   *       Type: {@link ANEURALNETWORKS_FLOAT32}.
   * * 29: The scale of the intermediate result of matmul,
   *       i.e. input to layer normalization, at output gate.
   *       Type: {@link ANEURALNETWORKS_FLOAT32}.
   * * 30: The zero point of the hidden state, i.e. input to
   *       projection.
   *       Type: {@link ANEURALNETWORKS_INT32}.
   * * 31: The scale of the hidden state, i.e. input to
   *       projection.
   *       Type: {@link ANEURALNETWORKS_FLOAT32}.
   *
   * Outputs:
   * * 0: The output state (out).
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}
   *      Shape: [batchSize, outputSize]
   * * 1: The cell state (out).
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   *      Shape: [batchSize, numUnits]
   * * 2: The output. This is effectively the same as the current
   *      "output state (out)" value.
   *      Type: {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}
   *      Shape: [batchSize, outputSize]
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_QUANTIZED_LSTM = 95,

  /**
   * Executes one of the two referenced models as determined by a boolean
   * value.
   *
   * The inputs and outputs of the two referenced models must agree with the
   * signature of this operation. That is, if the operation has (3 + n) inputs
   * and m outputs, both models must have n inputs and m outputs with the same
   * types, ranks (if specified), dimensions (if specified), scales,
   * zeroPoints, and other operand parameters as the corresponding operation
   * inputs and outputs.
   *
   * Inputs:
   * * 0: A value of type {@link ANEURALNETWORKS_TENSOR_BOOL8} and shape [1]
   *      that determines which of the two referenced models to execute.
   *      The operand must have fully specified dimensions.
   * * 1: A {@link ANEURALNETWORKS_MODEL} reference to the model to be
   *      executed if the condition is true.
   * * 2: A {@link ANEURALNETWORKS_MODEL} reference to the model to be
   *      executed if the condition is false.
   * * 3 ~ (n + 2): Inputs to be passed to the model selected for execution.
   *
   * Outputs:
   * * 0 ~ (m - 1): Outputs produced by the selected model.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_IF = 96,

  /**
   * Executes the body model until the condition model outputs false.
   *
   * The inputs to this operation are the condition model, the body model,
   * and operand values for the first iteration of the loop. The values are
   * implicitly split into three groups of input-output, state-only, and
   * input-only values, as described below.
   *
   * The outputs of this operation are the final values of input-output
   * operands.
   *
   * Both the condition and body model receive (m + k + n) inputs.
   * * The first m (m >= 1) inputs are input-output operands. For the first
   *   iteration, these are initialized from the corresponding inputs of the
   *   WHILE operation. In subsequent iterations, their values come from the
   *   corresponding outputs of the body model produced during the previous
   *   iteration.
   * * The next k (k >= 0) inputs are state-only operands. They are similar to
   *   the input-output operands, except that their values are no longer
   *   available after the loop terminates.
   * * The last n (n >= 0) inputs are input-only operands. Their values come
   *   from the corresponding inputs of the WHILE operation.
   *
   * The body model produces (m + k) outputs.
   * * The first m outputs are input-output operands. They become the outputs
   *   of the WHILE operation when a termination condition is reached.
   * * The last k outputs are state-only operands. Their values are no longer
   *   available after the loop terminates.
   *
   * The numbers m, k, and n are inferred by the runtime as follows:
   *     m = (WHILE operation output count)
   *     k = (body model output count) - m
   *     n = (body model input count) - m - k
   *
   * The pseudo-code below illustrates the flow of a WHILE operation with
   * inputs condition, body, initial_input_output, initial_state, input_only
   * (m = 1, k = 1, n = 1):
   *
   *     input_output = initial_input_output
   *     state = initial_state
   *     while condition(input_output, state, input_only):
   *         input_output, state = body(input_output, state, input_only)
   *     return input_output
   *
   * To prevent infinite loops, there is an implicit execution timeout
   * associated with each loop ("loop timeout duration"). See {@link
   * ANeuralNetworksExecution_setLoopTimeout}.
   *
   * Inputs:
   * * 0: A {@link ANEURALNETWORKS_MODEL} reference to the condition
   *      model. The model must have (m + k + n) inputs with
   *      the same types, ranks (if specified), dimensions (if specified),
   *      scales, zeroPoints, and other operand parameters as the
   *      corresponding inputs of the WHILE operation and exactly one output
   *      of {@link ANEURALNETWORKS_TENSOR_BOOL8} and shape [1].
   *      The output operand must have fully specified dimensions.
   * * 1: A {@link ANEURALNETWORKS_MODEL} reference to the body model.
   *      The model must have (m + k + n) inputs and (m + k) outputs with
   *      the same types, ranks (if specified), dimensions (if specified),
   *      scales, zeroPoints, and other operand parameters as the
   *      corresponding inputs and outputs of the WHILE operation.
   * * (m inputs): Initial values for input-output operands.
   * * (k inputs): Initial values for state-only operands.
   * * (n inputs): Values for input-only operands.
   *
   * Outputs:
   * * 0 ~ (m - 1): Outputs produced by the loop.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_WHILE = 97,

  /**
   * Computes exponential linear activation on the input tensor element-wise.
   *
   * The output is calculated using the following formula:
   *
   *     ELU(x) = max(0, x) + min(0, alpha * (exp(x) - 1))
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor, specifying the input. May be zero-sized.
   * * 1: A scalar, specifying the alpha parameter.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT16},
   *      the alpha value must be of {@link ANEURALNETWORKS_FLOAT16}.
   *      For input tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT32},
   *      the alpha value must be of {@link ANEURALNETWORKS_FLOAT32}.
   *
   * Outputs:
   * * 0: The output tensor of same shape and type as input0.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_ELU = 98,

  /**
   * Computes hard-swish activation on the input tensor element-wise.
   *
   * Hard swish activation is introduced in
   * https://arxiv.org/pdf/1905.02244.pdf
   *
   * The output is calculated using the following formula:
   *
   *     h-swish(x) = x * max(0, min(6, (x + 3))) / 6
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A tensor, specifying the input. May be zero-sized.
   *
   * Outputs:
   * * 0: The output tensor of same shape and type as input0.
   *      Scale and zero point of this tensor may be different from the input
   *      tensor's parameters.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_HARD_SWISH = 99,

  /**
   * Creates a tensor filled with a scalar value.
   *
   * Supported output tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: A 1-D tensor, specifying the desired output tensor shape.
   * * 1: A scalar, specifying the value to fill the output tensors with.
   *      For output tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT16},
   *      the scalar must be of {@link ANEURALNETWORKS_FLOAT16}.
   *      For output tensor of {@link ANEURALNETWORKS_TENSOR_FLOAT32},
   *      the scalar must be of {@link ANEURALNETWORKS_FLOAT32}.
   *      For output tensor of {@link ANEURALNETWORKS_TENSOR_INT32},
   *      the scalar must be of {@link ANEURALNETWORKS_INT32}.
   *
   * Outputs:
   * * 0: The output tensor.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_FILL = 100,

  /**
   * Returns the rank of a tensor.
   *
   * The rank of a tensor is the number of dimensions in it. Also known as
   * "order", "degree", "ndims".
   *
   * Supported tensor {@link OperandCode}:
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT16}
   * * {@link ANEURALNETWORKS_TENSOR_FLOAT32}
   * * {@link ANEURALNETWORKS_TENSOR_INT32}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT16_SYMM}
   * * {@link ANEURALNETWORKS_TENSOR_BOOL8}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT16_ASYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_SYMM}
   * * {@link ANEURALNETWORKS_TENSOR_QUANT8_ASYMM_SIGNED}
   *
   * Supported tensor rank: from 1.
   *
   * Inputs:
   * * 0: The input tensor.
   *
   * Outputs:
   * * 0: A scalar of {@link ANEURALNETWORKS_INT32}, specifying the rank
   *      of the input tensor.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_RANK = 101,
} OperationCode;

/**
 * Fused activation function types.
 *
 * Available since NNAPI feature level 1.
 */
typedef enum {
  /** NO fused activation function. */
  ANEURALNETWORKS_FUSED_NONE = 0,
  /** Fused ReLU activation function. */
  ANEURALNETWORKS_FUSED_RELU = 1,
  /** Fused ReLU1 activation function. */
  ANEURALNETWORKS_FUSED_RELU1 = 2,
  /** Fused ReLU6 activation function. */
  ANEURALNETWORKS_FUSED_RELU6 = 3,
} FuseCode;

/**
 * Implicit padding algorithms.
 *
 *
 * Available since NNAPI feature level 1.
 */
typedef enum {
  /**
   * SAME padding.
   * Padding on both ends are the "same":
   *     padding_to_beginning =  total_padding / 2
   *     padding_to_end       = (total_padding + 1)/2.
   * i.e., for even number of padding, padding to both ends are exactly
   * the same; for odd number of padding, padding to the ending is bigger
   * than the padding to the beginning by 1.
   *
   * total_padding is a function of input, stride, dilation and filter size.
   * It could be computed as follows:
   *    out_size = (input + stride - 1) / stride
   *    effective_filter_size = (filter_size - 1) * dilation + 1
   *    needed_input = (out_size - 1) * stride + effective_filter_size
   *    total_padding = max(0, needed_input - input_size)
   *  The computation is the same for the horizontal and vertical directions.
   */
  ANEURALNETWORKS_PADDING_SAME = 1,

  /**
   * VALID padding.
   * No padding. When the input size is not evenly divisible by
   * the filter size, the input at the end that could not fill
   * the whole filter tile will simply be ignored.
   */
  ANEURALNETWORKS_PADDING_VALID = 2,
} PaddingCode;

/**
 * Execution preferences.
 *
 * Available since NNAPI feature level 1.
 */
typedef enum {
  /**
   * Prefer executing in a way that minimizes battery drain.
   * This is desirable for compilations that will be executed often.
   */
  ANEURALNETWORKS_PREFER_LOW_POWER = 0,
  /**
   * Prefer returning a single answer as fast as possible, even if this causes
   * more power consumption.
   */
  ANEURALNETWORKS_PREFER_FAST_SINGLE_ANSWER = 1,
  /**
   * Prefer maximizing the throughput of successive frames, for example when
   * processing successive frames coming from the camera.
   */
  ANEURALNETWORKS_PREFER_SUSTAINED_SPEED = 2,
} PreferenceCode;

/**
 * Device types.
 *
 * The type of NNAPI device.
 */
typedef enum {
  /** The device type cannot be provided. */
  ANEURALNETWORKS_DEVICE_UNKNOWN = 0,
  /** The device does not fall into any category below. */
  ANEURALNETWORKS_DEVICE_OTHER = 1,
  /** The device runs NNAPI models on single or multi-core CPU. */
  ANEURALNETWORKS_DEVICE_CPU = 2,
  /** The device can run NNAPI models and also accelerate graphics APIs such
   * as OpenGL ES and Vulkan. */
  ANEURALNETWORKS_DEVICE_GPU = 3,
  /** Dedicated accelerator for Machine Learning workloads. */
  ANEURALNETWORKS_DEVICE_ACCELERATOR = 4,
} DeviceTypeCode;

/**
 * NNAPI feature levels.
 *
 * Each update of the NNAPI specification yields a new NNAPI feature level enum value.
 * NNAPI feature level corrseponds to an NNAPI specification version that a driver
 * and/or the NNAPI runtime can implement.
 *
 * A feature level up to and including "FEATURE_LEVEL_5" maps directly to
 * the Android API level that introduced the corresponding update of the NNAPI
 * specification. Feature levels after Android API level 31 have no association with
 * API level because the NNAPI specification can be updated between Android API
 * releases. Outputs of {@link ANeuralNetworksDevice_getFeatureLevel} and
 * {@link ANeuralNetworks_getRuntimeFeatureLevel} must be compared against
 * these enum values instead of the Android API level.
 */
typedef enum {
  /** NNAPI specification available in Android O-MR1, Android NNAPI feature level 1 */
  ANEURALNETWORKS_FEATURE_LEVEL_1 = 27,
  /** NNAPI specification available in Android P, Android NNAPI feature level 2 */
  ANEURALNETWORKS_FEATURE_LEVEL_2 = 28,
  /** NNAPI specification available in Android Q, Android NNAPI feature level 3 */
  ANEURALNETWORKS_FEATURE_LEVEL_3 = 29,
  /** NNAPI specification available in Android R, Android NNAPI feature level 4 */
  ANEURALNETWORKS_FEATURE_LEVEL_4 = 30,
  /**
   * NNAPI specification available in Android S, Android NNAPI feature level 5.
   * After Android S, the NNAPI specification can be updated between Android
   * API releases.
   */
  ANEURALNETWORKS_FEATURE_LEVEL_5 = 31,
} FeatureLevelCode;

/**
 * Result codes.
 *
 * <p>Any NNAPI function can return any result code, including result codes not
 * currently documented. Any value other than {@link ANEURALNETWORKS_NO_ERROR}
 * indicates a failure of some kind.</p>
 *
 * <p>Additional information about the nature of a failure can be obtained from
 * the device log after enabling NNAPI debugging by setting the debug.nn.vlog
 * property to 1, e.g., by calling "adb shell setprop debug.nn.vlog 1".</p>
 *
 * Available since NNAPI feature level 1.
 */
typedef enum {
  /**
   * Operation was successful.
   */
  ANEURALNETWORKS_NO_ERROR = 0,

  /**
   * Failure caused by not enough available memory.
   */
  ANEURALNETWORKS_OUT_OF_MEMORY = 1,

  ANEURALNETWORKS_INCOMPLETE = 2,

  /**
   * Failure caused by unexpected null argument.
   */
  ANEURALNETWORKS_UNEXPECTED_NULL = 3,

  /**
   * Failure caused by invalid function arguments, invalid model definition,
   * invalid execution definition or invalid data at execution time.
   */
  ANEURALNETWORKS_BAD_DATA = 4,

  /**
   * Failure caused by failed model execution.
   */
  ANEURALNETWORKS_OP_FAILED = 5,

  /**
   * Failure caused by object being in the wrong state.
   */
  ANEURALNETWORKS_BAD_STATE = 6,

  /**
   * Failure caused by not being able to map a file into memory.
   * This may be caused by a file descriptor not being mappable, or an AHardwareBuffer
   * not supported by the device.
   * Mitigate by reading its content into memory.
   */
  ANEURALNETWORKS_UNMAPPABLE = 7,

  /**
   * Failure caused by insufficient buffer size provided to a model output.
   */
  ANEURALNETWORKS_OUTPUT_INSUFFICIENT_SIZE = 8,

  /**
   * Failure caused by a device not being available.
   */
  ANEURALNETWORKS_UNAVAILABLE_DEVICE = 9,

  /**
   * Failure because a deadline could not be met for a task, but future
   * deadlines may still be met for the same task after a short delay.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_MISSED_DEADLINE_TRANSIENT = 10,

  /**
   * Failure because a deadline could not be met for a task, and future
   * deadlines will likely also not be met for the same task even after a
   * short delay.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_MISSED_DEADLINE_PERSISTENT = 11,

  /**
   * Failure because of a resource limitation within the driver, but future
   * calls for the same task may still succeed after a short delay.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_RESOURCE_EXHAUSTED_TRANSIENT = 12,

  /**
   * Failure because of a resource limitation within the driver, and future
   * calls for the same task will likely also fail even after a short
   * delay.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_RESOURCE_EXHAUSTED_PERSISTENT = 13,

  /**
   * Failure indicating an object is in a dead state.
   *
   * Available since NNAPI feature level 4.
   */
  ANEURALNETWORKS_DEAD_OBJECT = 14,
} ResultCode;

/**
 * For {@link ANeuralNetworksModel_setOperandValue}, values with a
 * length smaller or equal to this will be immediately copied into
 * the model. The size is in bytes.
 *
 * Available since NNAPI feature level 1.
 */
enum { ANEURALNETWORKS_MAX_SIZE_OF_IMMEDIATELY_COPIED_VALUES = 128 };

/**
 * For {@link ANeuralNetworksCompilation_setCaching}, specify the size
 * of the cache token required from the application. The size is in bytes.
 *
 * Available since NNAPI feature level 3.
 */
enum { ANEURALNETWORKS_BYTE_SIZE_OF_CACHE_TOKEN = 32 };

/**
 * Different duration measurements.
 *
 * Durations are measured in nanoseconds.
 *
 * Available since NNAPI feature level 3.
 */
typedef enum {
  // Execution time on hardware (not driver, which runs on host processor).
  ANEURALNETWORKS_DURATION_ON_HARDWARE = 0,
  // Execution time in driver (including time on hardware).  Excludes overhead
  // such as that of the runtime itself and the IPC needed for the runtime to
  // communicate with the driver.
  ANEURALNETWORKS_DURATION_IN_DRIVER = 1,
  // Execution time on hardware, after all dependencies have been signaled.
  // If no dependencies specified (for example, if the execution was scheduled other
  // than with {@link ANeuralNetworksExecution_startComputeWithDependencies}), the
  // reported time will be the same as ANEURALNETWORKS_DURATION_ON_HARDWARE.
  // Available since NNAPI feature level 4.
  ANEURALNETWORKS_FENCED_DURATION_ON_HARDWARE = 2,
  // Execution time in driver, after all dependencies have been signaled. Excludes
  // overhead such as that of the runtime itself and the IPC needed for the runtime
  // to communicate with the driver.
  // If no dependencies specified (for example, if the execution was scheduled other
  // than with {@link ANeuralNetworksExecution_startComputeWithDependencies}), the
  // reported time will be the same as ANEURALNETWORKS_DURATION_IN_DRIVER.
  // Available since NNAPI feature level 4.
  ANEURALNETWORKS_FENCED_DURATION_IN_DRIVER = 3,
} DurationCode;

/**
 * Relative execution priority.
 *
 * Available since NNAPI feature level 4.
 */
typedef enum {
  ANEURALNETWORKS_PRIORITY_LOW = 90,
  ANEURALNETWORKS_PRIORITY_MEDIUM = 100,
  ANEURALNETWORKS_PRIORITY_HIGH = 110,
  ANEURALNETWORKS_PRIORITY_DEFAULT = ANEURALNETWORKS_PRIORITY_MEDIUM,
} PriorityCode;

/**
 * ANeuralNetworksMemory is an opaque type that represents memory.
 *
 * This type is used to represent shared memory, memory mapped files,
 * and similar memories.
 *
 * By using shared memory, a program can efficiently communicate to the
 * runtime and drivers the tensors that define a model. See
 * {@link ANeuralNetworksModel_setOperandValueFromMemory}. An application
 * should typically create one shared memory object that contains every constant tensor
 * needed to define a model. {@link ANeuralNetworksMemory_createFromFd} can be used to
 * create shared memory from a file handle.
 * {@link ANeuralNetworksMemory_createFromAHardwareBuffer} can be used to
 * create shared memory from an AHardwareBuffer handle.
 *
 * Memory objects can also be used to specify the input and output arguments of
 * an execution. See {@link ANeuralNetworksExecution_setInputFromMemory}
 * and {@link ANeuralNetworksExecution_setOutputFromMemory}.
 *
 * When calling {@link ANeuralNetworksModel_setOperandValueFromMemory},
 * {@link ANeuralNetworksExecution_setInputFromMemory} and
 * {@link ANeuralNetworksExecution_setOutputFromMemory}, each operand in the shared
 * memory object must be aligned on a boundary of a byte size that is a multiple
 * of the element type byte size, e.g., a tensor with
 * {@link ANEURALNETWORKS_TENSOR_FLOAT32} type must be aligned on 4-byte boundary.
 *
 * It is the application's responsibility to ensure that there are no uses of
 * the memory after calling {@link ANeuralNetworksMemory_free}. This includes
 * any model which references this memory because of a call to
 * {@link ANeuralNetworksModel_setOperandValueFromMemory}, any compilation
 * created using such a model, any execution object or burst object created
 * using such a compilation, or any execution which references this memory
 * because of a call to {@link ANeuralNetworksExecution_setInputFromMemory} or
 * {@link ANeuralNetworksExecution_setOutputFromMemory}.
 *
 * Available since NNAPI feature level 1.
 *
 * Starting at NNAPI feature level 4, the application may request creation of device native memory
 * from {@link ANeuralNetworksMemoryDesc} to avoid potential memory copying and transformation
 * overhead between executions. See also {@link ANeuralNetworksMemoryDesc} and
 * {@link ANeuralNetworksMemory_createFromDesc}.
 */
typedef struct ANeuralNetworksMemory ANeuralNetworksMemory;

/**
 * ANeuralNetworksModel is an opaque type that contains a description of the
 * mathematical operations that constitute the model.
 *
 * <p>Build the model by calling<ul>
 * <li>{@link ANeuralNetworksModel_create}</li>
 * <li>{@link ANeuralNetworksModel_addOperation}</li>
 * <li>{@link ANeuralNetworksModel_addOperand}</li>
 * </ul>
 *
 * This forms a graph in which each operation and operand is a node, a
 * directed edge from an operand to an operation indicates that the
 * operand is an input to the operation, and a directed edge from an
 * operation to an operand indicates that the operand is an output
 * from the operation. This graph must be acyclic.
 *
 * A model is completed by calling {@link ANeuralNetworksModel_finish}.
 * A model is destroyed by calling {@link ANeuralNetworksModel_free}.
 *
 * <p>A model cannot be modified once {@link ANeuralNetworksModel_finish}
 * has been called on it.</p>
 *
 * <p>It is the application's responsibility to make sure that only one thread
 * modifies a model at a given time. It is however safe for more than one
 * thread to use the model once {@link ANeuralNetworksModel_finish} has returned.</p>
 *
 * <p>It is also the application's responsibility to ensure that there are no
 * other uses of the model after calling {@link ANeuralNetworksModel_free}.
 * This includes any compilation, execution object or burst object created using
 * the model.</p>
 *
 * Available since NNAPI feature level 1.
 */
typedef struct ANeuralNetworksModel ANeuralNetworksModel;

/**
 * ANeuralNetworksCompilation is an opaque type that can be used to compile
 * a machine learning model.
 *
 * <p>To use:<ul>
 *    <li>Create a new compilation instance by calling the
 *        {@link ANeuralNetworksCompilation_create} function or
 *        {@link ANeuralNetworksCompilation_createForDevices}.</li>
 *    <li>Set any desired properties on the compilation (for example,
 *        {@link ANeuralNetworksCompilation_setPreference}).</li>
 *    <li>Optionally, set the caching signature and the cache directory on the
 *        compilation by calling {@link ANeuralNetworksCompilation_setCaching}.</li>
 *    <li>Complete the compilation with {@link ANeuralNetworksCompilation_finish}.</li>
 *    <li>Use the compilation as many times as needed
 *        with {@link ANeuralNetworksExecution_create} and
 *        {@link ANeuralNetworksBurst_create}.</li>
 *    <li>Destroy the compilation with {@link ANeuralNetworksCompilation_free}
 *        once all executions using the compilation have completed.</li></ul></p>
 *
 * A compilation is completed by calling {@link ANeuralNetworksCompilation_finish}.
 * A compilation is destroyed by calling {@link ANeuralNetworksCompilation_free}.
 *
 * <p>A compilation cannot be modified once {@link ANeuralNetworksCompilation_finish}
 * has been called on it.</p>
 *
 * <p>It is the application's responsibility to make sure that only
 * one thread modifies a compilation at a given time. It is however
 * safe for more than one thread to use the compilation once
 * {@link ANeuralNetworksCompilation_finish} has returned.</p>
 *
 * <p>It is also the application's responsibility to ensure that there are no other
 * uses of the compilation after calling {@link ANeuralNetworksCompilation_free}.
 * This includes any execution object or burst object created using the compilation,
 * or any memory descriptor with the compilation as part of one of the roles specified by
 * {@link ANeuralNetworksMemoryDesc_addInputRole} or
 * {@link ANeuralNetworksMemoryDesc_addOutputRole}.</p>
 *
 * Available since NNAPI feature level 1.
 */
typedef struct ANeuralNetworksCompilation ANeuralNetworksCompilation;

/**
 * ANeuralNetworksExecution is an opaque type that can be used to apply a machine
 * learning model to a set of inputs.
 *
 * <p>To use:<ul>
 *    <li>Create a new execution instance by calling the
 *        {@link ANeuralNetworksExecution_create} function.</li>
 *    <li>Associate input buffers or memory regions to the model inputs with
 *        {@link ANeuralNetworksExecution_setInput} or
 *        {@link ANeuralNetworksExecution_setInputFromMemory}.</li>
 *    <li>Associate output buffers or memory regions to the model outputs with
 *        {@link ANeuralNetworksExecution_setOutput} or
 *        {@link ANeuralNetworksExecution_setOutputFromMemory}.</li>
 *    <li>Optionally, configure the execution with
 *        {@link ANeuralNetworksExecution_setLoopTimeout},
 *        {@link ANeuralNetworksExecution_setMeasureTiming},
 *        {@link ANeuralNetworksExecution_setReusable}, or
 *        {@link ANeuralNetworksExecution_setTimeout}.
 *    <li>Apply the model with one of the following:</li><ul>
 *        <li>Asynchronously with {@link ANeuralNetworksExecution_startCompute}
 *            or with {@link ANeuralNetworksExecution_startComputeWithDependencies},
 *            waiting for the execution to complete with
 *            {@link ANeuralNetworksEvent_wait}.</li>
 *        <li>Synchronously with {@link ANeuralNetworksExecution_compute}.</li>
 *        <li>Synchronously as part of an execution burst with
 *            {@link ANeuralNetworksExecution_burstCompute}.</li></ul>
 *        If the execution has been marked as reusable, then you can
 *        apply the model more than once.
 *    <li>Destroy the execution with
 *        {@link ANeuralNetworksExecution_free}.</li></ul></p>
 *
 * <p>An output buffer or memory region must not overlap with any
 * other output buffer or memory region, with an input buffer or
 * memory region, or with an operand value in a memory object
 * ({@link ANeuralNetworksModel_setOperandValueFromMemory}).</p>
 *
 * <p>An execution is in the preparation state after it is created by
 * {@link ANeuralNetworksExecution_create}. An execution may only be modified in the preparation
 * state. Scheduling a computation by calling {@link ANeuralNetworksExecution_burstCompute},
 * {@link ANeuralNetworksExecution_compute}, {@link ANeuralNetworksExecution_startCompute},
 * or {@link ANeuralNetworksExecution_startComputeWithDependencies} will change the state of
 * the execution object to the computation state. When the computation completes, the state of
 * the execution object will change from the computation state to the completed state.
 * The computation is completed when {@link ANeuralNetworksExecution_compute},
 * {@link ANeuralNetworksExecution_burstCompute}, or {@link ANeuralNetworksEvent_wait}
 * has returned.</p>
 *
 * <p>An execution can be applied to a model with
 * {@link ANeuralNetworksExecution_burstCompute},
 * {@link ANeuralNetworksExecution_compute},
 * {@link ANeuralNetworksExecution_startCompute} or
 * {@link ANeuralNetworksExecution_startComputeWithDependencies} only once. Create new
 * executions to do new evaluations of the model.</p>
 *
 * <p>Starting at NNAPI feature level 5, the application may call
 * {@link ANeuralNetworksExecution_setReusable} to set an execution to be reusable for multiple
 * computations. The application may schedule and evaluate a computation again from the completed
 * state of a reusable execution. The execution cannot be modified between computations.</p>
 *
 * <p>It is the application's responsibility to make sure that only one thread
 * modifies an execution at a given time. It is however safe for more than one
 * thread to use {@link ANeuralNetworksEvent_wait} at the same time.</p>
 *
 * <p>It is also the application's responsibility to ensure that the execution
 * either has never been scheduled or has completed (i.e., that
 * {@link ANeuralNetworksExecution_burstCompute},
 * {@link ANeuralNetworksExecution_compute}, or
 * {@link ANeuralNetworksEvent_wait} has returned) before calling
 * {@link ANeuralNetworksExecution_free}.</p>.
 *
 * <p>It is also the application's responsibility to ensure that there are no other
 * uses of the execution after calling {@link ANeuralNetworksExecution_free}.</p>
 *
 * <p>It is the application's responsibility to ensure that there are no concurrent computations
 * scheduled and evaluated on the same execution, either by means of
 * {@link ANeuralNetworksExecution_compute} or
 * {@link ANeuralNetworksExecution_burstCompute} (which are synchronous)
 * in different threads, or by means of
 * {@link ANeuralNetworksExecution_startCompute} or
 * {@link ANeuralNetworksExecution_startComputeWithDependencies} (which are asynchronous).
 * It is however safe to schedule and evaluate multiple computations on different executions
 * concurrently. (Concurrent uses of {@link ANeuralNetworksExecution_burstCompute} must be on
 * different burst objects.) The runtime makes no guarantee on the ordering of
 * completion of executions. If it's important to the application, the
 * application should enforce the ordering by ensuring that one execution
 * completes before the next is scheduled (for example, by scheduling all
 * executions synchronously within a single thread, or by scheduling all
 * executions asynchronously and using {@link ANeuralNetworksEvent_wait} between
 * calls to {@link ANeuralNetworksExecution_startCompute}); or by using
 * {@link ANeuralNetworksExecution_startComputeWithDependencies} to make the execution wait for a
 * list of events to be signaled before starting the actual evaluation.</p>
 *
 * Available since NNAPI feature level 1.
 */
typedef struct ANeuralNetworksExecution ANeuralNetworksExecution;

/**
 * Parameters for ANEURALNETWORKS_TENSOR_QUANT8_SYMM_PER_CHANNEL operand.
 */
typedef struct ANeuralNetworksSymmPerChannelQuantParams {
  /** The index of the channel dimension. */
  uint32_t channelDim;
  /** The size of the scale array. Should be equal to dimension[channelDim] of the Operand. */
  uint32_t scaleCount;
  /** The array of scaling values for each channel. Each value must be greater than zero. */
  const float *scales;
} ANeuralNetworksSymmPerChannelQuantParams;

/**
 * ANeuralNetworksBurst is an opaque type that can be used to reduce the latency
 * of a rapid sequence of executions. It will likely cause overhead if only used
 * for a single execution.
 *
 * ANeuralNetworksBurst serves as a context object for any number of inferences
 * using {@link ANeuralNetworksExecution} objects. An ANeuralNetworksBurst
 * object and the {@link ANeuralNetworksExecution} objects used with it must all
 * have been created from the same {@link ANeuralNetworksCompilation} object.
 *
 * This object is also used as a hint to drivers, providing insight to the
 * lifetime of a rapid sequence of executions. For example, a driver may choose
 * to increase the clock frequency of its accelerator for the lifetime of a
 * burst object.
 *
 * <p>To use:<ul>
 *    <li>Create a new burst object by calling the
 *        {@link ANeuralNetworksBurst_create} function.</li>
 *    <li>For each execution:</li><ul>
 *        <li>Create {@link ANeuralNetworksExecution} and configure its
 *            properties (see {@link ANeuralNetworksExecution} for details).</li>
 *        <li>Apply the model synchronously with
 *            {@link ANeuralNetworksExecution_burstCompute}, reusing the same
 *            {@link ANeuralNetworksBurst} with the new
 *            {@link ANeuralNetworksExecution}.</li>
 *        <li>Use and free the {@link ANeuralNetworksExecution}.</li></ul>
 *    <li>Destroy the burst with
 *        {@link ANeuralNetworksBurst_free}.</li></ul></p>
 *
 * Available since NNAPI feature level 3.
 */
typedef struct ANeuralNetworksBurst ANeuralNetworksBurst;

/**
 * ANeuralNetworksOperandType describes the type of an operand.
 *
 * This structure is used to describe both scalars and tensors.
 *
 * A tensor operand type with all dimensions specified is "fully
 * specified".  Whenever possible (i.e., whenever the dimensions are
 * known at model construction time), a tensor operand type should be
 * (but is not required to be) fully specified, in order to enable the
 * best possible performance.
 *
 * If a tensor operand's type is not fully specified, the dimensions
 * of the operand are deduced from the operand types and values of the
 * operation for which that operand is an output or from the corresponding
 * {@link ANEURALNETWORKS_IF} or {@link ANEURALNETWORKS_WHILE} operation input
 * operand type in the case of referenced model input operands.
 *
 * <p>In the following situations, a tensor operand type must be fully
 * specified:<ul>
 *     <li>The operand has a constant value, set by
 *         {@link ANeuralNetworksModel_setOperandValue} (with a
 *         non-nullptr buffer) or
 *         {@link ANeuralNetworksModel_setOperandValueFromMemory}.</li>
 *     <li>The operand is a model input (see
 *         {@link ANeuralNetworksModel_identifyInputsAndOutputs}) of the main
 *         model within a compilation.  A fully specified tensor operand type
 *         must either be provided to {@link ANeuralNetworksModel_addOperand};
 *         or it must be provided to the corresponding
 *         {@link ANeuralNetworksExecution_setInput}, or
 *         {@link ANeuralNetworksExecution_setInputFromMemory}.
 *         EXCEPTION: If the input is optional and omitted
 *         (by passing nullptr for buffer to
 *         {@link ANeuralNetworksExecution_setInput}) then it need
 *         not have a fully specified tensor operand type.</li>
 *     <li>The operand is a model output (see
 *         {@link ANeuralNetworksModel_identifyInputsAndOutputs}) of the main
 *         model within a compilation and is to be used with {@link
 *         ANeuralNetworksExecution_startComputeWithDependencies}.
 *         A fully specified tensor operand type must either be provided
 *         to {@link ANeuralNetworksModel_addOperand}; or it must be
 *         provided to the corresponding
 *         {@link ANeuralNetworksExecution_setOutput}, or
 *         {@link ANeuralNetworksExecution_setOutputFromMemory}.</li></ul>
 *
 * A tensor operand type of specified rank but some number of
 * unspecified dimensions is represented by setting dimensionCount to
 * the rank and each unspecified dimension to 0.
 *
 * Available since NNAPI feature level 1.
 *
 * Starting at NNAPI feature level 3, a tensor operand type of unspecified rank is
 * represented by setting dimensionCount to 0 and dimensions to NULL (just as if
 * it were a scalar operand type).
 */
typedef struct ANeuralNetworksOperandType {
  /**
   * The data type, e.g ANEURALNETWORKS_FLOAT32.
   */
  int32_t type;

  /**
   * The number of dimensions (rank).
   *
   * Must be 0 for scalars.
   */
  uint32_t dimensionCount;

  /**
   * The dimensions of the tensor.
   *
   * Must be nullptr for scalars.
   */
  const uint32_t *dimensions;

  /**
   * The quantization scale.
   *
   * Must be 0 when not applicable to an operand type.
   *
   * See {@link OperandCode}.
   */
  float scale;

  /**
   * The quantization zero point.
   *
   * Must be 0 when not applicable to an operand type.
   *
   * See {@link OperandCode}.
   */
  int32_t zeroPoint;
} ANeuralNetworksOperandType;

/**
 * Aliasing to {@link OperationCode}, used in function
 * {@link ANeuralNetworksModel_addOperation}.
 */
typedef int32_t ANeuralNetworksOperationType;

/**
 * ANeuralNetworksEvent is an opaque type that represents an event
 * that will be signaled once an execution completes.
 *
 * Available since NNAPI feature level 1.
 */
typedef struct ANeuralNetworksEvent ANeuralNetworksEvent;

/**
 * ANeuralNetworksDevice is an opaque type that represents a device.
 *
 * This type is used to query basic properties and supported operations of the corresponding
 * device, and control which device(s) a model is to be run on.
 *
 * Available since NNAPI feature level 3.
 */
typedef struct ANeuralNetworksDevice ANeuralNetworksDevice;

/**
 * ANeuralNetworksMemoryDesc is an opaque type that represents a memory descriptor.
 *
 * A memory descriptor describes the properties of a memory object, and is used by
 * {@link ANeuralNetworksMemory_createFromDesc}.
 *
 * To use:
 *   - Create a new memory descriptor by calling {@link ANeuralNetworksMemoryDesc_create}.
 *   - Specify all of the intended input and output roles by calling
 *     {@link ANeuralNetworksMemoryDesc_addInputRole} and
 *     {@link ANeuralNetworksMemoryDesc_addOutputRole}.
 *   - Optionally, specify the memory dimensions by calling
 *     {@link ANeuralNetworksMemoryDesc_setDimensions}.
 *   - Complete the memory descriptor with {@link ANeuralNetworksMemoryDesc_finish}.
 *   - Use the memory descriptor as many times as needed with
 *     {@link ANeuralNetworksMemory_createFromDesc}.
 *   - Destroy the memory descriptor with {@link ANeuralNetworksMemoryDesc_free}.
 *
 * A memory descriptor is completed by calling {@link ANeuralNetworksMemoryDesc_finish}.
 * A memory descriptor is destroyed by calling {@link ANeuralNetworksMemoryDesc_free}.
 *
 * A memory descriptor must not be modified once {@link ANeuralNetworksMemoryDesc_finish}
 * has been called on it.
 *
 * It is the application's responsibility to make sure that only
 * one thread modifies a memory descriptor at a given time. It is however
 * safe for more than one thread to use the memory descriptor once
 * {@link ANeuralNetworksMemoryDesc_finish} has returned.
 *
 * It is also the application's responsibility to ensure that there are no other
 * uses of the memory descriptor after calling {@link ANeuralNetworksMemoryDesc_free}.
 * It is however safe to continue using a {@link ANeuralNetworksMemory} object created
 * from the memory descriptor.
 *
 * Available since NNAPI feature level 4.
 */
typedef struct ANeuralNetworksMemoryDesc ANeuralNetworksMemoryDesc;

__END_DECLS

#endif  // ANDROID_FRAMEWORKS_ML_NN_RUNTIME_NEURAL_NETWORKS_TYPES_H

/** @} */
